YOLOv7 to detect bone fractures on X-ray images
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Updated
Apr 3, 2023 - Python
YOLOv7 to detect bone fractures on X-ray images
Tensorflow 2 single shot multibox detector (SSD) implementation from scratch with MobileNetV2 and VGG16 backbones
🎵 Trained CNN model for Genre classification on GTZAN dataset [CNN Model: https://github.com/Hguimaraes/gtzan.keras]
This repository contains the trained deep learning models for the detection and prediction of Epileptic seizures.
The Multi-PDF's Chat Agent is a Streamlit-based web application designed to facilitate interactive conversations with a chatbot. The app allows users to upload multiple PDF documents, extract text information from them, and train a chatbot using this extracted content. Users can then engage in real-time conversations with the chatbot.
License Plate, Head blurring / pixelation using Yolov5 & Face blurring using Mediapipe
Automated meningioma segmentation
Run a model predicting the USA presidential party winner 2024, Allora worker for topic 11 an initial inferences of token R : Republican and D : Democrat
Automated brain segmentation
Safety Cone Detection using Yolov8 models as well optimize .onxx and .blob model
💲 Predict whether income exceeds $50K/yr based on census data
Provide facenet training model download, regularly updated
Aiconverter Web App Using Nextjs , TailwindCSS, Python(Some Libraries)
Largest Trained Dataset for SupplyChain
An automatic gate opening system with an additional parking system (using Raspberry PI).
Image Classification with Keras: Predicting Images using Trained CNN with ImageNet Dataset.
Mobile App to Recognize Car Logo from an Image using IBM Watson Visual Recognition.
upload a cat or dog pic and model analyze the pic and tell which animal it is. for now it only work on dog and cats but i will add more animals in future :-)
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