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Railway tag detection based on keras frcnn and custom net_work

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铁路交通号码牌小数字目标检测与识别



环境

  • Python 3.6.4
  • Keras 2.0

检测效果

设计思路

考虑到拍摄图片清晰度欠佳,而且小数字号码牌在图片中的占比非常低,这里采取2阶段端到端(end2end)的方式构建检测网络:
1)首先,第1阶段的特征提取加RPN类似于Fasterrcnn,生成前景概率得分最佳的Top-5 proposals(一般50%有号码牌目标,50%没有)
2)然后,根据该正负proposals样本,做特征映射与裁剪crop,进行第2阶段的anchors、特征提取、小数字检测识别过程

loss封装到layer

自定义loss并封装到第1阶段的[class,regression]输出,跳过交替式训练的中间prediction过程,实现完全end2end,提高训练效率

//loss layer
loss_cls = Lambda(lambda x: class_loss_cls(*x), name='cls_loss')([input_target_cls, classification])
loss_regr = Lambda(lambda x: class_loss_regr(*x), name='regr_loss')([input_target_regr, bboxes_regression])

数据集

数据集

训练

//training
python train_loss_layer.py

预测

//prediction
python predict.py

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Railway tag detection based on keras frcnn and custom net_work

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