PyTorch-1.0 implementation for the adversarial training on MNIST/CIFAR-10 and visualization on robustness classifier.
-
Updated
Aug 26, 2020 - Python
PyTorch-1.0 implementation for the adversarial training on MNIST/CIFAR-10 and visualization on robustness classifier.
Implementation of Conv-based and Vit-based networks designed for CIFAR.
The aim of this project is to train autoencoder, and use the trained weights as initialization to improve classification accuracy with cifar10 dataset.
Designed a smaller architecture implemented from the paper Deep Residual Learning for Image Recognition and achieved 93.65% accuracy.
contains exercise solution
ConvMixer - Patches Are All You Need?
AI Nexus 🌟 is a streamlined suite of AI-powered apps built with Streamlit. It features 👗 StyleScan for fashion classification, 🩺 GlycoTrack for diabetes prediction, 🔢 DigitSense for digit recognition, 🌸 IrisWise for iris species identification, 🎯 ObjexVision for object recognition, and 🎓 GradeCast for GPA prediction with detailed insights.
使用了 https://github.com/SaeedShurrab/SimSiam-pytorch 作为Simsiam backbone,添加了中文注释和简单的训练过程
Implemeting SVM to classify images with hinge loss and the softmax loss.
The cifar10 classification project completed by tensorflow, including complete training, prediction, visualization, independent of each module of the project, and convenient expansion.
⭐ Make Once for All support CIFAR10 dataset.
DigiPic-Classifier is a powerful image classification app built with Streamlit. It features two models: CIFAR-10 Object Recognition to classify objects like airplanes, cars, animals, and more, and MNIST Digit Classification for recognizing handwritten digits. With a sleek interface and real-time predictions, DigiPic-Classifier offers a seamless
A step-by-step implementation of a ResNet-18 model for image classification on the CIFAR-10 dataset
Classification of CIFAR dataset with CNN which has %91 accuracy and deployment of the model with FLASK.
Implemented the Deep Residual Learning for Image Recognition Paper and achieved better accuracy by customizing different parts of the architecture.
Implementing a neural network classifier for cifar-10
Deep Learning Projects
A summarization of the course Deep Learning with PyTorch at Jovian.
Add a description, image, and links to the cifar10-classification topic page so that developers can more easily learn about it.
To associate your repository with the cifar10-classification topic, visit your repo's landing page and select "manage topics."