Facebook AI Performance Evaluation Platform
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Updated
Jan 3, 2019 - Python
Facebook AI Performance Evaluation Platform
Architectures of convolutional neural networks for image classification in PyTorch
Implemented the training and inference of several common deep learning model algorithms with tensorflow and pytorch.
A notebook to learn the use of CNNs and ShuffleNet
Implemented multiple face detection algorithms to accurately count and save recognized faces in a designated folder, enhancing detection accuracy. Integrated ShuffleNet and MTCNN successfully. Developed intelligent graphics for project analysis in Excel. Implemented facial recognition using PCA and Eigenfaces for dataset matching.
Implementation of ShuffleNet V2 architecture
Single Shot MultiBox Detector in TensorFlow,Please pay attention to my branch about shufflenet-tensorflow.
Various codes and scripts used during AI research, all neatly organised
Various codes and scripts used during AI research. Orginally developed in the Binary_label_predictions_with_CNNs repository
Image Classification Training Framework for Network Distillation
Implemented multiple face detection algorithms to accurately count and save recognized faces in a designated folder, enhancing detection accuracy. Integrated ShuffleNet and MTCNN successfully. Developed intelligent graphics for project analysis in Excel. Implemented facial recognition using PCA and Eigenfaces for dataset matching.
Multi image label classification by multi models.
shufflenet implement by mxnet gluon.
Shufflenet implementation in tensorflow based on https://arxiv.org/abs/1707.01083
Models for Computer Vision
This code includes classification and detection tasks in Computer Vision, and semantic segmentation task will be added later.
Implementation of MobileNet, MobileNetv2, ShuffleNet, ShuffleNetv2, EfficientNet in Pytorch.
DenseShuffleNet for Semantic Segmentation using Caffe for Cityscapes and Mapillary Vistas Dataset
A collection of deep learning models (PyTorch implemtation)
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