Skip to content

Explore diverse computer vision projects using Transfer Learning(TL), Convolutional Neural Networks (CNN), Autoencoder and more in this collaborative repository

Notifications You must be signed in to change notification settings

Snigdho8869/Computer-Vision-Projects

Repository files navigation

Computer Vision Projects

This repository hosts a collection of computer vision projects using deep learning techniques, focusing on various real-world applications. Each project is designed to demonstrate the power of transfer learning and convolutional neural networks (CNN) in solving practical problems. Here's what you'll find in this repository:

Project Highlights:

  • Cataract Detection: Detect cataracts in eye images using pre-trained models and fine-tuning.

  • Traffic Sign Detection: Identify and classify traffic signs from images for improved road safety.

  • Pneumonia Detection: Utilize deep learning to diagnose pneumonia from chest X-ray images.

  • Emotion Detection: Build models to recognize and classify emotions from facial expressions.

  • MNIST Digit Classification: Develop a model to classify handwritten digits from the MNIST dataset, a fundamental task for beginners in computer vision.

  • Driver Drowsiness Detection: Enhance road safety with Driver Drowsiness Detection! Utilize Transfer Learning and Convolutional Neural Networks with Parallel Convolution Architecture to identify and classify driver drowsiness.

  • Eye Diseases: Contribute to healthcare with a deep learning project focused on classifying eye diseases. Employ Convolutional Neural Networks (CNNs), including those with a Parallel Convolution Architecture, for accurate disease classification.

  • Lane Detection for Autonomous Vehicles: Contribute to the development of autonomous vehicles with a lane detection algorithm using computer vision techniques. Highlight detected lanes on the road, providing a visual representation crucial for vehicle navigation and safety.

  • Object Detection Using YOLOv3: Experience the speed and accuracy of the YOLOv3 algorithm for real-time object detection. This repository provides code for implementing object detection and showcases the versatility of YOLOv3 in identifying and tracking various objects.