30 open-source projects similar to fartashf/vsepp, ranked by how many features they have in common. Compare stars, activity and what each one does to find the best Vsepp alternative.
This project is an unsupervised image restoration tool that uses a convolutional neural network as a structural prior to reconstruct images from noisy or incomplete data. It functions as a neural network image prior, utilizing the inherent biases of the network architecture to restore pixels without the need for a pre-trained dataset or external learning. The system performs zero-shot image restoration by treating the network architecture itself as a regularization term. It uses a randomly initialized encoder-decoder structure and iterative gradient descent to minimize pixel-wise loss, recove
PyTorch implementation of Fader Networks (NIPS 2017).
😇A pyTorch implementation of the DeepMoji model: state-of-the-art deep learning model for analyzing sentiment, emotion, sarcasm etc
Classification with PyTorch.
Train an RL agent to execute natural language instructions in a 3D Environment (PyTorch)
A PyTorch implementation for PyramidNets (Deep Pyramidal Residual Networks, https://arxiv.org/abs/1610.02915)
This is easy-to-follow Capsule Network tutorial with clean readable code: Capsule Network.ipynb
Base pretrained models and datasets in pytorch (MNIST, SVHN, CIFAR10, CIFAR100, STL10, AlexNet, VGG16, VGG19, ResNet, Inception, SqueezeNet)
Pixel-wise segmentation on the VOC2012dataset dataset using pytorchpytorch.
PyTorch implementation of Deformable Convolution
This is a PyTorch object detection framework that implements the Single Shot MultiBox Detector for identifying and localizing multiple objects within images and video. The project provides a neural network architecture designed for single-shot object detection, which predicts bounding boxes and class labels in one pass. The implementation includes a real-time object detector capable of processing live video streams to track and label objects across sequential frames. It also features a complete computer vision training pipeline for preparing image datasets and training model weights. The fra
PyTorch Implementation of Realtime Multi-Person Pose Estimation project.
This is a PyTorch-based computer vision library for detecting 2D and 3D facial landmark coordinates. It functions as a facial landmark detector and reconstruction tool, utilizing deep learning to identify precise geometric points on human faces from image datasets. The library allows for the selection of specific detection backends to balance accuracy and processing speed. It supports the integration of precomputed bounding box files, which enables the system to bypass the initial detection phase and proceed directly to landmark extraction. The toolkit includes capabilities for batch image p
This repo is implementation for PointNet(https://arxiv.org/abs/1612.00593) in pytorch. The model is in pointnet/model.py.
This project is a computer vision explainable AI library and framework for PyTorch, providing a suite of tools to visualize and audit the internal decision-making processes of deep neural networks. It serves as a neural network attribution tool and debugging utility to identify which image regions drive model predictions. The library is distinguished by its support for both gradient-based and gradient-free attribution methods, allowing for the generation of visual heatmaps and attribution maps without requiring modifications to the original model source code. It further differentiates itself