Here are
12 public repositories
matching this topic...
[High Performance / MAX 30 FPS] RaspberryPi3(RaspberryPi/Raspbian Stretch) or Ubuntu + Multi Neural Compute Stick(NCS/NCS2) + RealSense D435(or USB Camera or PiCamera) + MobileNet-SSD(MobileNetSSD) + Background Multi-transparent(Simple multi-class segmentation) + FaceDetection + MultiGraph + MultiProcessing + MultiClustering
Updated
Nov 12, 2019
Python
MobileNet-SSD(MobileNetSSD) + Neural Compute Stick(NCS) Faster than YoloV2 + Explosion speed by RaspberryPi · Multiple moving object detection with high accuracy.
Updated
Feb 13, 2019
Python
Edge TPU Accelerator / Multi-TPU + MobileNet-SSD v2 + Python + Async + LattePandaAlpha/RaspberryPi3/LaptopPC
Updated
Aug 12, 2019
Python
A self automatically labeling tool
Updated
Feb 2, 2018
Python
RaspberryPi3(Raspbian Stretch) + MobileNetv2-SSDLite(Tensorflow/MobileNetv2SSDLite) + RealSense D435 + Tensorflow1.11.0 + without Neural Compute Stick(NCS)
Updated
Feb 13, 2019
Python
Artificial intelligence powered real-time video analytics software for retail stores
Updated
Jun 20, 2021
Python
It is a social distance detector based on OpenCV and YOLOV3 / Mobilenet_SSD used to find track persons who are following social distance and who are not following.
Updated
Jun 27, 2020
Python
CNN + OpenCV based perimeter control system
Updated
Oct 20, 2018
Python
Social Distancing Confirming using OpenCV Python
Updated
Jul 29, 2021
Python
Updated
Jun 3, 2022
Python
Using Pre-Trained Model to recognise images
Updated
Jul 2, 2021
Python
This repository implements object detection using YOLO and MobileNetSSD techniques in real-time. Both techniques use OpenCv to access the webcam.
Updated
May 6, 2021
Python
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