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RusLearn
Russian language Learning appAI-Art
Implementation of a genetic algorithm to develop some filter for a picturesna-final-project
Automatisation of a flutter app using Dockerdeep-learning-material-projects
This repository has deep learning materialopenCV-practice
Practing the fundamentals of the openCV - Open Source Computer Vision Library using the python programming langaugeplant-disease-detection
In this project, I created a Convolutional Neural Network which predicts whether a plant is suffering from a disease.simple-chatbot
This repository contains code for a simple chatbot, in a simulated environmentrestaurent-recommendation-system
This repository contains code for building a recommendation system that recommends restaurents in a particular destinationcolourizing-b-w-images-with-GANs
Image Colorization is an interesting gan project to work on. We all have some old photographs and reels which were shot in the times when colored filmography was a talk of the future. Wouldnβt it be amazing if you can colorize those black and white images bringing them back to life? This repository talks about that!forest-fire-prediction
This repository contains code for a machine learning model that predicts the confidence level of a forest firegender-prediction-based-on-voice
This repository contains code for gender classification based on voicefacial-recognition-using-ConvNet-Inception
In this notebook, we will build a face recognition system. Many of the ideas presented here are from FaceNet and DeepFace. Face recognition problems commonly fall into two categories: Face Verification - "is this the claimed person?". For example, at some airports, you can pass through customs by letting a system scan your passport and then verifying that you (the person carrying the passport) are the correct person. A mobile phone that unlocks using your face is also using face verification. This is a 1:1 matching problem. Face Recognition - "who is this person?". For example, the video lecture showed a face recognition video (https://www.youtube.com/watch?v=wr4rx0Spihs) of Baidu employees entering the office without needing to otherwise identify themselves. This is a 1:K matching problem. FaceNet learns a neural network that encodes a face image into a vector of 512 numbers. By comparing two such vectors, you can then determine if two pictures are of the same person.video-chatting-app-TCP
Implementation of a video calling application using the TCP protocol.Love Open Source and this site? Check out how you can help us