Is the inference time of MobileNetv2 smaller than v1??? · Issue #4 · eric612/MobileNet-SSD-windows · GitHub
![MobileNet-Tiny: A Deep Neural Network-Based Real-Time Object Detection for Rasberry Pi | Semantic Scholar MobileNet-Tiny: A Deep Neural Network-Based Real-Time Object Detection for Rasberry Pi | Semantic Scholar](https://d3i71xaburhd42.cloudfront.net/e0cc641d0e34ebf40fbd0592422f49e3a8eb462c/5-TableVI-1.png)
MobileNet-Tiny: A Deep Neural Network-Based Real-Time Object Detection for Rasberry Pi | Semantic Scholar
![SciELO - Brasil - FINE-TUNING DEEP LEARNING MODELS FOR PEDESTRIAN DETECTION FINE-TUNING DEEP LEARNING MODELS FOR PEDESTRIAN DETECTION SciELO - Brasil - FINE-TUNING DEEP LEARNING MODELS FOR PEDESTRIAN DETECTION FINE-TUNING DEEP LEARNING MODELS FOR PEDESTRIAN DETECTION](https://minio.scielo.br/documentstore/1982-2170/Q6h393K6Z9Ym9kRYgSSFPVr/0c257eca61beae4c5a9879b8d1cc9c4c63667dbd.png)
SciELO - Brasil - FINE-TUNING DEEP LEARNING MODELS FOR PEDESTRIAN DETECTION FINE-TUNING DEEP LEARNING MODELS FOR PEDESTRIAN DETECTION
![How to retrain SSD Mobilenet for real-time object detection using a Raspberry Pi and Movidius Neural Compute Stick? - Tolotra Samuel How to retrain SSD Mobilenet for real-time object detection using a Raspberry Pi and Movidius Neural Compute Stick? - Tolotra Samuel](https://tolotra.com/wp-content/uploads/2018/09/img_5b9dafdcaa94c.png)
How to retrain SSD Mobilenet for real-time object detection using a Raspberry Pi and Movidius Neural Compute Stick? - Tolotra Samuel
GitHub - PINTO0309/MobileNet-SSD-RealSense: [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) + ...
![Chinese version)Train your own SSD MobileNet object detection model on Windows 10 | by Cecile Liu | Medium Chinese version)Train your own SSD MobileNet object detection model on Windows 10 | by Cecile Liu | Medium](https://miro.medium.com/v2/resize:fit:1400/1*ZJ9w0RT25WniG-3JAyUb0A.png)