mirror of
https://github.com/deepinsight/insightface.git
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373 lines
16 KiB
Python
373 lines
16 KiB
Python
from __future__ import print_function
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import sys
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import argparse
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import os
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import pprint
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import re
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import mxnet as mx
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import numpy as np
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from mxnet.module import Module
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import mxnet.optimizer as optimizer
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from rcnn.logger import logger
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from rcnn.config import config, default, generate_config
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from rcnn.symbol import *
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from rcnn.core import callback, metric
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from rcnn.core.loader import CropLoader, CropLoader2
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from rcnn.core.module import MutableModule
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from rcnn.utils.load_data import load_gt_roidb, merge_roidb, filter_roidb
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from rcnn.utils.load_model import load_param
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def get_fixed_params(symbol, fixed_param):
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if not config.LAYER_FIX:
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return []
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fixed_param_names = []
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#for name in symbol.list_arguments():
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# for f in fixed_param:
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# if re.match(f, name):
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# fixed_param_names.append(name)
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#pre = 'mobilenetv20_features_linearbottleneck'
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idx = 0
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for name in symbol.list_arguments():
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#print(idx, name)
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if idx<7 and name!='data':
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fixed_param_names.append(name)
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#elif name.startswith('stage1_'):
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# fixed_param_names.append(name)
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if name.find('upsampling')>=0:
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fixed_param_names.append(name)
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idx+=1
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return fixed_param_names
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def train_net(args, ctx, pretrained, epoch, prefix, begin_epoch, end_epoch,
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lr=0.001, lr_step='5'):
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# setup config
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#init_config()
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#print(config)
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# setup multi-gpu
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input_batch_size = config.TRAIN.BATCH_IMAGES * len(ctx)
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# print config
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logger.info(pprint.pformat(config))
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# load dataset and prepare imdb for training
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image_sets = [iset for iset in args.image_set.split('+')]
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roidbs = [load_gt_roidb(args.dataset, image_set, args.root_path, args.dataset_path,
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flip=not args.no_flip)
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for image_set in image_sets]
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#roidb = merge_roidb(roidbs)
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#roidb = filter_roidb(roidb)
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roidb = roidbs[0]
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# load symbol
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#sym = eval('get_' + args.network + '_train')(num_classes=config.NUM_CLASSES, num_anchors=config.NUM_ANCHORS)
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#feat_sym = sym.get_internals()['rpn_cls_score_output']
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#train_data = AnchorLoader(feat_sym, roidb, batch_size=input_batch_size, shuffle=not args.no_shuffle,
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# ctx=ctx, work_load_list=args.work_load_list,
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# feat_stride=config.RPN_FEAT_STRIDE, anchor_scales=config.ANCHOR_SCALES,
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# anchor_ratios=config.ANCHOR_RATIOS, aspect_grouping=config.TRAIN.ASPECT_GROUPING)
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# load and initialize params
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sym = None
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if len(pretrained)==0:
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arg_params = {}
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aux_params = {}
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else:
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logger.info('loading %s,%d'%(pretrained, epoch))
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sym, arg_params, aux_params = mx.model.load_checkpoint(pretrained, epoch)
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#arg_params, aux_params = load_param(pretrained, epoch, convert=True)
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#for k in ['rpn_conv_3x3', 'rpn_cls_score', 'rpn_bbox_pred', 'cls_score', 'bbox_pred']:
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# _k = k+"_weight"
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# if _k in arg_shape_dict:
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# v = 0.001 if _k.startswith('bbox_') else 0.01
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# arg_params[_k] = mx.random.normal(0, v, shape=arg_shape_dict[_k])
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# print('init %s with normal %.5f'%(_k,v))
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# _k = k+"_bias"
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# if _k in arg_shape_dict:
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# arg_params[_k] = mx.nd.zeros(shape=arg_shape_dict[_k])
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# print('init %s with zero'%(_k))
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sym = eval('get_' + args.network + '_train')(sym)
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#print(sym.get_internals())
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feat_sym = []
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for stride in config.RPN_FEAT_STRIDE:
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feat_sym.append(sym.get_internals()['face_rpn_cls_score_stride%s_output' % stride])
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train_data = CropLoader(feat_sym, roidb, batch_size=input_batch_size, shuffle=not args.no_shuffle,
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ctx=ctx, work_load_list=args.work_load_list)
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# infer max shape
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max_data_shape = [('data', (1, 3, max([v[1] for v in config.SCALES]), max([v[1] for v in config.SCALES])))]
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#max_data_shape = [('data', (1, 3, max([v[1] for v in config.SCALES]), max([v[1] for v in config.SCALES])))]
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max_data_shape, max_label_shape = train_data.infer_shape(max_data_shape)
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max_data_shape.append(('gt_boxes', (1, roidb[0]['max_num_boxes'], 5)))
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logger.info('providing maximum shape %s %s' % (max_data_shape, max_label_shape))
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# infer shape
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data_shape_dict = dict(train_data.provide_data + train_data.provide_label)
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arg_shape, out_shape, aux_shape = sym.infer_shape(**data_shape_dict)
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arg_shape_dict = dict(zip(sym.list_arguments(), arg_shape))
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out_shape_dict = dict(zip(sym.list_outputs(), out_shape))
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aux_shape_dict = dict(zip(sym.list_auxiliary_states(), aux_shape))
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logger.info('output shape %s' % pprint.pformat(out_shape_dict))
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for k in arg_shape_dict:
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v = arg_shape_dict[k]
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if k.find('upsampling')>=0:
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print('initializing upsampling_weight', k)
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arg_params[k] = mx.nd.zeros(shape=v)
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init = mx.init.Initializer()
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init._init_bilinear(k, arg_params[k])
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#print(args[k])
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# check parameter shapes
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#for k in sym.list_arguments():
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# if k in data_shape_dict:
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# continue
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# assert k in arg_params, k + ' not initialized'
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# assert arg_params[k].shape == arg_shape_dict[k], \
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# 'shape inconsistent for ' + k + ' inferred ' + str(arg_shape_dict[k]) + ' provided ' + str(arg_params[k].shape)
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#for k in sym.list_auxiliary_states():
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# assert k in aux_params, k + ' not initialized'
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# assert aux_params[k].shape == aux_shape_dict[k], \
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# 'shape inconsistent for ' + k + ' inferred ' + str(aux_shape_dict[k]) + ' provided ' + str(aux_params[k].shape)
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fixed_param_prefix = config.FIXED_PARAMS
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# create solver
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data_names = [k[0] for k in train_data.provide_data]
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label_names = [k[0] for k in train_data.provide_label]
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fixed_param_names = get_fixed_params(sym, fixed_param_prefix)
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print('fixed', fixed_param_names, file=sys.stderr)
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mod = Module(sym, data_names=data_names, label_names=label_names,
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logger=logger, context=ctx, work_load_list=args.work_load_list,
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fixed_param_names=fixed_param_names)
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# metric
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eval_metrics = mx.metric.CompositeEvalMetric()
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mid=0
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for m in range(len(config.RPN_FEAT_STRIDE)):
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stride = config.RPN_FEAT_STRIDE[m]
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#mid = m*MSTEP
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_metric = metric.RPNAccMetric(pred_idx=mid, label_idx=mid+1, name='RPNAcc_s%s'%stride)
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eval_metrics.add(_metric)
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mid+=2
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#_metric = metric.RPNLogLossMetric(pred_idx=mid, label_idx=mid+1)
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#eval_metrics.add(_metric)
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_metric = metric.RPNL1LossMetric(loss_idx=mid, weight_idx=mid+1, name='RPNL1Loss_s%s'%stride)
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eval_metrics.add(_metric)
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mid+=2
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if config.FACE_LANDMARK:
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_metric = metric.RPNL1LossMetric(loss_idx=mid, weight_idx=mid+1, name='RPNLandMarkL1Loss_s%s'%stride)
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eval_metrics.add(_metric)
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mid+=2
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if config.HEAD_BOX:
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_metric = metric.RPNAccMetric(pred_idx=mid, label_idx=mid+1, name='RPNAcc_head_s%s'%stride)
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eval_metrics.add(_metric)
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mid+=2
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#_metric = metric.RPNLogLossMetric(pred_idx=mid, label_idx=mid+1)
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#eval_metrics.add(_metric)
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_metric = metric.RPNL1LossMetric(loss_idx=mid, weight_idx=mid+1, name='RPNL1Loss_head_s%s'%stride)
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eval_metrics.add(_metric)
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mid+=2
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if config.CASCADE>0:
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for _idx in range(config.CASCADE):
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if stride in config.CASCADE_CLS_STRIDES:
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_metric = metric.RPNAccMetric(pred_idx=mid, label_idx=mid+1, name='RPNAccCAS%d_s%s'%(_idx,stride))
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eval_metrics.add(_metric)
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mid+=2
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if stride in config.CASCADE_BBOX_STRIDES:
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_metric = metric.RPNL1LossMetric(loss_idx=mid, weight_idx=mid+1, name='RPNL1LossCAS%d_s%s'%(_idx,stride))
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eval_metrics.add(_metric)
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mid+=2
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# callback
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#means = np.tile(np.array(config.TRAIN.BBOX_MEANS), config.NUM_CLASSES)
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#stds = np.tile(np.array(config.TRAIN.BBOX_STDS), config.NUM_CLASSES)
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#epoch_end_callback = callback.do_checkpoint(prefix, means, stds)
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epoch_end_callback = None
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# decide learning rate
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#base_lr = lr
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#lr_factor = 0.1
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#lr = base_lr * (lr_factor ** (len(lr_epoch) - len(lr_epoch_diff)))
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lr_epoch = [int(epoch) for epoch in lr_step.split(',')]
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lr_epoch_diff = [epoch - begin_epoch for epoch in lr_epoch if epoch > begin_epoch]
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lr_iters = [int(epoch * len(roidb) / input_batch_size) for epoch in lr_epoch_diff]
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iter_per_epoch = int(len(roidb)/input_batch_size)
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lr_steps = []
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if len(lr_iters)==5:
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factors = [0.5, 0.5, 0.4, 0.1, 0.1]
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for i in range(5):
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lr_steps.append( (lr_iters[i], factors[i]) )
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elif len(lr_iters)==8: #warmup
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for li in lr_iters[0:5]:
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lr_steps.append( (li, 1.5849) )
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for li in lr_iters[5:]:
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lr_steps.append( (li, 0.1) )
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else:
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for li in lr_iters:
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lr_steps.append( (li, 0.1) )
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#lr_steps = [ (10,0.1), (20, 0.1) ] #XXX
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end_epoch = 10000
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logger.info('lr %f lr_epoch_diff %s lr_steps %s' % (lr, lr_epoch_diff, lr_steps))
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# optimizer
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opt = optimizer.SGD(learning_rate=lr, momentum=0.9, wd=args.wd, rescale_grad=1.0/len(ctx), clip_gradient=None)
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initializer=mx.init.Xavier()
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#initializer = mx.init.Xavier(rnd_type='gaussian', factor_type="out", magnitude=2) #resnet style
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train_data = mx.io.PrefetchingIter(train_data)
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_cb = mx.callback.Speedometer(train_data.batch_size, frequent=args.frequent, auto_reset=False)
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global_step = [0]
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def save_model(epoch):
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arg, aux = mod.get_params()
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all_layers = mod.symbol.get_internals()
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outs = []
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for stride in config.RPN_FEAT_STRIDE:
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num_anchors = config.RPN_ANCHOR_CFG[str(stride)]['NUM_ANCHORS']
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if config.CASCADE>0:
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_name = 'face_rpn_cls_score_stride%d_output' % (stride)
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cls_pred = all_layers[_name]
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cls_pred = mx.symbol.Reshape(data=cls_pred, shape=(0, 2, -1, 0))
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cls_pred = mx.symbol.SoftmaxActivation(data=cls_pred, mode="channel")
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cls_pred = mx.symbol.Reshape(data=cls_pred, shape=(0, 2 * num_anchors, -1, 0))
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outs.append(cls_pred)
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_name = 'face_rpn_bbox_pred_stride%d_output' % stride
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rpn_bbox_pred = all_layers[_name]
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outs.append(rpn_bbox_pred)
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if config.FACE_LANDMARK:
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_name = 'face_rpn_landmark_pred_stride%d_output' % stride
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rpn_landmark_pred = all_layers[_name]
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outs.append(rpn_landmark_pred)
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for casid in range(config.CASCADE):
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if stride in config.CASCADE_CLS_STRIDES:
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_name = 'face_rpn_cls_score_stride%d_cas%d_output' % (stride, casid)
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cls_pred = all_layers[_name]
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cls_pred = mx.symbol.Reshape(data=cls_pred, shape=(0, 2, -1, 0))
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cls_pred = mx.symbol.SoftmaxActivation(data=cls_pred, mode="channel")
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cls_pred = mx.symbol.Reshape(data=cls_pred, shape=(0, 2 * num_anchors, -1, 0))
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outs.append(cls_pred)
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if stride in config.CASCADE_BBOX_STRIDES:
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_name = 'face_rpn_bbox_pred_stride%d_cas%d_output' % (stride, casid)
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bbox_pred = all_layers[_name]
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outs.append(bbox_pred)
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else:
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_name = 'face_rpn_cls_score_stride%d_output' % stride
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rpn_cls_score = all_layers[_name]
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# prepare rpn data
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rpn_cls_score_reshape = mx.symbol.Reshape(data=rpn_cls_score,
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shape=(0, 2, -1, 0),
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name="face_rpn_cls_score_reshape_stride%d" % stride)
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rpn_cls_prob = mx.symbol.SoftmaxActivation(data=rpn_cls_score_reshape,
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mode="channel",
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name="face_rpn_cls_prob_stride%d" % stride)
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rpn_cls_prob_reshape = mx.symbol.Reshape(data=rpn_cls_prob,
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shape=(0, 2 * num_anchors, -1, 0),
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name='face_rpn_cls_prob_reshape_stride%d' % stride)
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_name = 'face_rpn_bbox_pred_stride%d_output' % stride
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rpn_bbox_pred = all_layers[_name]
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outs.append(rpn_cls_prob_reshape)
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outs.append(rpn_bbox_pred)
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if config.FACE_LANDMARK:
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_name = 'face_rpn_landmark_pred_stride%d_output' % stride
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rpn_landmark_pred = all_layers[_name]
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outs.append(rpn_landmark_pred)
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_sym = mx.sym.Group(outs)
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mx.model.save_checkpoint(prefix, epoch, _sym, arg, aux)
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def _batch_callback(param):
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#global global_step
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_cb(param)
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global_step[0]+=1
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mbatch = global_step[0]
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for step in lr_steps:
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if mbatch==step[0]:
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opt.lr *= step[1]
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print('lr change to', opt.lr,' in batch', mbatch, file=sys.stderr)
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break
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if mbatch%iter_per_epoch==0:
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print('saving checkpoint', mbatch, file=sys.stderr)
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save_model(0)
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if mbatch==lr_steps[-1][0]:
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print('saving final checkpoint', mbatch, file=sys.stderr)
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save_model(0)
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#arg, aux = mod.get_params()
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#mx.model.save_checkpoint(prefix, 99, mod.symbol, arg, aux)
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sys.exit(0)
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# train
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mod.fit(train_data, eval_metric=eval_metrics, epoch_end_callback=epoch_end_callback,
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batch_end_callback=_batch_callback, kvstore=args.kvstore,
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optimizer=opt,
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initializer = initializer,
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allow_missing=True,
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arg_params=arg_params, aux_params=aux_params, begin_epoch=begin_epoch, num_epoch=end_epoch)
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def parse_args():
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parser = argparse.ArgumentParser(description='Train RetinaFace')
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# general
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parser.add_argument('--network', help='network name', default=default.network, type=str)
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parser.add_argument('--dataset', help='dataset name', default=default.dataset, type=str)
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args, rest = parser.parse_known_args()
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generate_config(args.network, args.dataset)
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parser.add_argument('--image_set', help='image_set name', default=default.image_set, type=str)
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parser.add_argument('--root_path', help='output data folder', default=default.root_path, type=str)
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parser.add_argument('--dataset_path', help='dataset path', default=default.dataset_path, type=str)
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# training
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parser.add_argument('--frequent', help='frequency of logging', default=default.frequent, type=int)
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parser.add_argument('--kvstore', help='the kv-store type', default=default.kvstore, type=str)
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parser.add_argument('--work_load_list', help='work load for different devices', default=None, type=list)
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parser.add_argument('--no_flip', help='disable flip images', action='store_true')
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parser.add_argument('--no_shuffle', help='disable random shuffle', action='store_true')
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# e2e
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#parser.add_argument('--gpus', help='GPU device to train with', default='0,1,2,3', type=str)
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parser.add_argument('--pretrained', help='pretrained model prefix', default=default.pretrained, type=str)
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parser.add_argument('--pretrained_epoch', help='pretrained model epoch', default=default.pretrained_epoch, type=int)
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parser.add_argument('--prefix', help='new model prefix', default=default.prefix, type=str)
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parser.add_argument('--begin_epoch', help='begin epoch of training, use with resume', default=0, type=int)
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parser.add_argument('--end_epoch', help='end epoch of training', default=default.end_epoch, type=int)
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parser.add_argument('--lr', help='base learning rate', default=default.lr, type=float)
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parser.add_argument('--lr_step', help='learning rate steps (in epoch)', default=default.lr_step, type=str)
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parser.add_argument('--wd', help='weight decay', default=default.wd, type=float)
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args = parser.parse_args()
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return args
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def main():
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args = parse_args()
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logger.info('Called with argument: %s' % args)
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#ctx = [mx.gpu(int(i)) for i in args.gpus.split(',')]
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ctx = []
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cvd = os.environ['CUDA_VISIBLE_DEVICES'].strip()
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if len(cvd)>0:
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for i in range(len(cvd.split(','))):
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ctx.append(mx.gpu(i))
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if len(ctx)==0:
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ctx = [mx.cpu()]
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print('use cpu')
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else:
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print('gpu num:', len(ctx))
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train_net(args, ctx, args.pretrained, args.pretrained_epoch, args.prefix, args.begin_epoch, args.end_epoch,
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lr=args.lr, lr_step=args.lr_step)
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if __name__ == '__main__':
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main()
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