Please ensure that JavaScript is enabled in your browser to use this page.
Total prize pool of $14,000
All projects (45)
Enabling HCI on Edge: Multi-threaded Gesture & Sound Control of kiosks with Intel OpenVINO. Eye Wink & Mouth Aspect with numerical models
People and Face Detection in Video for Security Surveillance using the Intel Distribution of OpenVINO toolkit.
A human pose detector which on further development can be used for the streaming of online fitness services.
In schools, attendance is the most importance thing. But still we are using traditional ways to mark the attendance.
A robust, inexpensive, yet powerful collision detection system for the purpose of small autonomous robots
An autonomous drone that uses deep learning to identify if people are maintaining social distancing or not. High Degree of Red = High Risk.
An image semantic segmentation model for finding unique features, objects in a given scene
This solution detects people in a designated area, providing the number of people in the frame and average duration of people in a frame
Hydra is an Intel OpenVino Deep Learning based Apple Vegetation Monitoring and Feeding system integrated with AIoT Technology
Allow easy enforcement of social distancing guidelines withing public spaces, by counting the number of people in a public space using YOLO.
Detecting COVID-19 with 90% Accuracy using X-Ray Scans and Speeding Up the process with OpenVino
This project helps you to detect and count moving cars, all in 'real time'
Tensorflow, Openvino and Streamlit based medical deep learning tools.
This is a system designed to track the driver's attention and alerts them in case they start getting distracted or drowsy while driving.
This tool is able to predict bitcoin price for next day using OpenVino toolkit.
Smart review your workout using Intel OpenVINO toolkit
We Detect Distracted Behaviour of Car Drivers using Cameras and OpenVino to Speed up Inference
Nil
This Deep Learning app helps teachers monitor realtime student's attentiveness in a remote learning classroom.
Classifying Casting and Moulding Defects in Industry Parts using Computer Vision and OpenVino