Paint2code - a lightweight tool designed to transform your hand-drawn sketches into functional HTML code.
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Updated
May 27, 2024 - Jupyter Notebook
Paint2code - a lightweight tool designed to transform your hand-drawn sketches into functional HTML code.
A ready-to-use Facial Expression Recognition model using MobileNet on augmented FER2013 dataset. Accuracy > 85%
# AGRO BRAIN AI - Crop Disease Prediction ## Project Overview **AGRO BRAIN AI** is an advanced crop disease prediction system leveraging deep learning techniques to help farmers and agricultural professionals detect and manage crop diseases effectively. By utilizing state-of-the-art models and deploying them on accessible platforms, this project
SmartTourism: Enhance your travel experience with image recognition on Android. Discover monument guides and categories. Create customized guides easily.
Classification of automotive parts as defective and non-defective with transfer learning.
🍅🍅🍅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~
Cataract detection model
DiNeSys is a distributed system built for deep learning network profiling on cloud-edge systems, developed with Tensorflow (CNN computational part) Apache Thrift (client/server structure)
Mango Leaf Disease Detection using CNN (Mobilenet architecture)
Deep Learning Courses
AI-Face-Mask-Detector
Deep Learning Courses
Knowledge Distillation from VGG16 (teacher model) to MobileNet (student model)
💎A high level pipeline for face landmarks detection, it supports training, evaluating, exporting, inference(Python/C++) and 100+ data augmentations, can easily install via pip.
An unofficial implementation of MobileNetV4 in Pytorch
Neural network model repository for highly sparse and sparse-quantized models with matching sparsification recipes
👁️🗨️ PWA for visually impaired people that announces objects detected with user's phone camera.
MobileNetV3 SSD的简洁版本
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