Classification models trained on ImageNet. Keras.
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Updated
Jul 21, 2022 - Python
Classification models trained on ImageNet. Keras.
This repository contains the source code of our work on designing efficient CNNs for computer vision
Detecting robot grasping positions with deep neural networks. The model is trained on Cornell Grasping Dataset. This is an implementation mainly based on the paper 'Real-Time Grasp Detection Using Convolutional Neural Networks' from Redmon and Angelova.
ImageNet file xml format to Darknet text format
Multi-label classification based on timm.
Code for You Only Cut Once: Boosting Data Augmentation with a Single Cut, ICML 2022.
Nearly Perfect & Easily Understandable PyTorch Implementation of SKNet
Mobilenet v1 trained on Imagenet for STM32 using extended CMSIS-NN with INT-Q quantization support
ImageNet model implemented using the Keras Functional API
Multi-label classification based on timm, and add SimCLR to timm.
A codebase & model zoo for pretrained backbone based on MegEngine.
PyTorch implementation of DiracDeltaNet from paper Synetgy: Algorithm-hardware Co-design for ConvNet Accelerators on Embedded FPGAs
Identify objects in images using a third-generation deep residual network.
Unofficial PyTorch Implementation of "Augmenting Convolutional networks with attention-based aggregation"
Image recognition and classification using Convolutional Neural Networks with TensorFlow
Pytorch based Android app, which classifies images using MobileNet-V2 model, takes image using CameraX API
Making CNNs interpretable.
【瑞士军刀般的工具】用最短的代码完成对模型的分析,包含 ImageNet Val、FLOPs、Params、Throuthput、CAM 等
Machine Learning (Imagenet) User Interface Demo application using Streamlit
Android app containing an Image classifier based on transfer learning CNN using Tensorflow 1.4.1 on Stanford's Imagenet cars dataset
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