Use of computer vision to detect shoplifting activity and report it into a smart dashboard
MIT License
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Fraudulent Credit Transaction detection system using SMOTE, Random Forest Classifier and Streamlit
Detects anomalies in time series using statistical features and forecasts future values with an L...
This application is a final course project for CS 343: Graph Data Science
Computer Vision app
FinSight - Financial Insights at Your Fingertip: FinSight is a cutting-edge AI assistant tailored...
Project FraudCatch leverages AI to predict and prevent financial fraud in real-time. It uses Apac...
Simple object detection app with streamlit
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Object detection and tracking algorithm implemented for Real-Time video streams and static images.
Streamlit app demonstrating an image browser for the Udacity self-driving-car dataset with realti...