Segmentation models with pretrained backbones. Keras and TensorFlow Keras.
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Updated
Aug 21, 2024 - Python
Segmentation models with pretrained backbones. Keras and TensorFlow Keras.
Practice on cifar100(ResNet, DenseNet, VGG, GoogleNet, InceptionV3, InceptionV4, Inception-ResNetv2, Xception, Resnet In Resnet, ResNext,ShuffleNet, ShuffleNetv2, MobileNet, MobileNetv2, SqueezeNet, NasNet, Residual Attention Network, SENet, WideResNet)
Tensorflow Faster RCNN for Object Detection
OpenMMLab Pre-training Toolbox and Benchmark
🍅🍅🍅YOLOv5-Lite: Evolved from yolov5 and the size of model is only 900 kb (int8) and 1.7M (fp16). Reach 15 FPS on the Raspberry Pi 4B~
Convolutional Neural Networks to predict the aesthetic and technical quality of images.
Implementation of EfficientNet model. Keras and TensorFlow Keras.
Caffe implementation of Google MobileNet SSD detection network, with pretrained weights on VOC0712 and mAP=0.727.
🍅 Deploy ncnn on mobile phones. Support Android and iOS. 移动端ncnn部署,支持Android与iOS。
Caffe Implementation of Google's MobileNets (v1 and v2)
Library for Fast and Flexible Human Pose Estimation
Classification models trained on ImageNet. Keras.
High level network definitions with pre-trained weights in TensorFlow
PytorchAutoDrive: Segmentation models (ERFNet, ENet, DeepLab, FCN...) and Lane detection models (SCNN, RESA, LSTR, LaneATT, BézierLaneNet...) based on PyTorch with fast training, visualization, benchmarking & deployment help
A caffe implementation of MobileNet-YOLO detection network
The implementation of various lightweight networks by using PyTorch. such as:MobileNetV2,MobileNeXt,GhostNet,ParNet,MobileViT、AdderNet,ShuffleNetV1-V2,LCNet,ConvNeXt,etc. ⭐⭐⭐⭐⭐
Books, Presentations, Workshops, Notebook Labs, and Model Zoo for Software Engineers and Data Scientists wanting to learn the TF.Keras Machine Learning framework
MobileNetV3 in pytorch and ImageNet pretrained models
A mobilenet SSD based face detector, powered by tensorflow object detection api, trained by WIDERFACE dataset.
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