Deep facial expressions recognition using Opencv and Tensorflow. Recognizing facial expressions from images or camera stream
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Updated
Jun 10, 2023 - Python
Deep facial expressions recognition using Opencv and Tensorflow. Recognizing facial expressions from images or camera stream
A Benchmark of Text Classification in PyTorch
基于法律裁判文书的事件抽取及其应用,包括数据的分词、词性标注、命名实体识别、事件要素抽取和判决结果预测等内容
Training and evaluating state-of-the-art deep learning CNN architectures for plant disease classification task.
This repository contains the source code of our work on designing efficient CNNs for computer vision
Image Classification using Keras as well as Tensorflow.
The source code and dataset are used to demonstrate the DF model, and reproduce the results of the ACM CCS2018 paper
Code to reproduce 'Deep Learning for Decentralized Parking Lot Occupancy Detection' paper.
🔥 Reproducibly benchmarking Keras and PyTorch models
A Complete and Simple Implementation of MobileNet-V2 in PyTorch
This application aims to early detection of lung cancer to give patients the best chance at recovery and survival using CNN Model.
Forest fire detection using Convolutional Neural Networks
An End to End Real Time Face Identification and attendance system using CNN
Classify movie posters by genre
MemeGen is a web application where the user gives an image as input and our tool generates a meme at one click for the user.
Weapon Detection & Classification through CCTV surveillance using Deep Learning-CNNs.
📦 PyTorch based visualization package for generating layer-wise explanations for CNNs.
GroupSoftmax cross entropy loss function for training with multiple different benchmark datasets
Extract and solve sudoku from an image using Computer Vision and Deep Learning
Real-time detection of potholes on roads using video (via Webcam) processed through a CNN model.
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