Connectionist Temporal Classification (CTC) decoding algorithms: best path, beam search, lexicon search, prefix search, and token passing. Implemented in Python.
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Updated
Jul 26, 2021 - Python
Connectionist Temporal Classification (CTC) decoding algorithms: best path, beam search, lexicon search, prefix search, and token passing. Implemented in Python.
Official Pytorch Implementation of: "Asymmetric Loss For Multi-Label Classification"(ICCV, 2021) paper
[ICCV 2021] Focal Frequency Loss for Image Reconstruction and Synthesis
face recognition training project(pytorch)
遥感图像的语义分割,基于深度学习,在Tensorflow框架下,利用TF.Keras,运行环境TF2.0
Ever wondered how to code your Neural Network using NumPy, with no frameworks involved?
Reproducing experimental results of LL4AL [Yoo et al. 2019 CVPR]
Prostate MR Image Segmentation 2012
YOLOv4 Pytorch implementation with all freebies and specials and 15 more exclusive improvements. Easy to use!
Loss modelling framework.
Code for the paper "Facial Emotion Recognition: State of the Art Performance on FER2013"
Focal Loss of multi-classification in tensorflow
An implementation for mnist center loss training and visualization
Deep Attentive Center Loss
Prostate MR Image Segmentation 2012
a simple pytorch implement of Multi-Sample Dropout
Weighted Focal Loss for multilabel classification
Implementation of "Anchor Loss: Modulating loss scale based on prediction difficulty"
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