Media Summary: This talk was presented on Pycon Israel 2017. Performance : 7 FPS (Nvidia RTX 2060) Accuracy : ~95% Colorado State CS540 (Artificial Intelligence) project presentation. Evaluation of model to predict

Traffic Light Detection Using Faster Rcnn - Detailed Analysis & Overview

This talk was presented on Pycon Israel 2017. Performance : 7 FPS (Nvidia RTX 2060) Accuracy : ~95% Colorado State CS540 (Artificial Intelligence) project presentation. Evaluation of model to predict For the past bit I have been working on polishing up my computer vision/machine learning skills, and decided to create a Used Fine - tuning model: ResNet 50 Custom dataset Traffic Light Recognition with Tiny CNN Models

Computer vision is an interdisciplinary field that has been gaining huge amounts of traction This is a 3-minute video explaining my individual contribution for the 4th Year Comprehensive Design & Analysis Project (CDAP) ...

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