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ChasingTrainFramework_GeneralOneClassDetection

ChasingTrainFramework_GeneralSingleClassDetection

ChasingTrainFramework_GeneralSingleClassDetection is a simple wrapper based on MXNet Module API for general one class detection. Chasing is just a project code.

Framework Introduction

  • data_iterator_base provide some utils for batch iterator. The design of a data iterator relies on the specific task. So we do not provide a default iterator here.

  • data_provider_base reformat, pack raw data. In most cases, we can load all data into the memory for fast access.

  • image_augmentation provide some often used augmentations.

  • inference_speed_eval provide two ways for inference speed evaluation -- MXNet with CUDNN and TensorRT with CUDNN.

  • loss_layer_farm provide customized loss type like hard negative mining, focal loss.

  • logging_GOCD is a logging wrapper.

  • solver_GOCD execute training process.

  • train_GOCD is the entrance of the framework.