edgetpu-yolo
yolov7_d2
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edgetpu-yolo | yolov7_d2 | |
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2 | 4 | |
81 | 3,130 | |
- | - | |
2.6 | 0.0 | |
11 days ago | 5 months ago | |
Python | Python | |
- | GNU General Public License v3.0 only |
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edgetpu-yolo
- YOLOv6: Redefine state-of-the-art for object detection
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A microcontroller board with a camera, mic, and Coral Edge TPU
I'm on the fence. It's a very nice device if you can get your models working on it - basically untouched at the price/power point. Drivers for me have been OK. I have an M.2 card connected to a Jetson devkit (makes for a nice embedded test bench) and it runs fine, no worse than the NCS for setup anyway. There were a couple of PCI settings to tweak but I documented the setup here [0]. For common use cases it's a decent option, I think. For custom models you really need to know what you're doing.
The main issue I've had is that the compiler behaviour differs between versions (and it's very difficult to find older releases), so where previously you could run a big model and delegate things to the CPU, now it sometimes won't compile at all. There were also problems where we trained a model in AutoML - using free credits but the real cost would have been over $100 - but edgetpu compiled model lost a lot of performance. The developers have been very helpful when I've contacted them, and generally you can get through to real devs (not generic support) who can look at your model for you. Mostly I think you need to take care when training models for these devices, but quantisation-aware training is not trivial to use in Tensorflow and there are only a few off-the-shelf models which are supported in the various toolkits. Model maker looks promising, but it's also finnicky in my experience [1].
I'm not super worried about hardware availability. They're suffering from the chip shortage like everyone else, so it's not surprising that lead times are long. I was able to buy my device in late 2020 without any trouble.
[0] https://github.com/jveitchmichaelis/edgetpu-yolo/blob/main/h...
yolov7_d2
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YOLOv7: Trainable Bag-of-Freebies
Especially hilarious considering some other people ALSO jumped on the "we made an object detector so let's call it YOLOvX" wagon and released...
Something called YOLOv7.
https://github.com/jinfagang/yolov7
- YOLOv7: YOLO with Transformers and Instance Segmentation
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How to Train YOLOv6 on a Custom Dataset
You're 9 months late https://github.com/jinfagang/yolov7
- YOLOv6: Redefine state-of-the-art for object detection
What are some alternatives?
yolov7 - Implementation of paper - YOLOv7: Trainable bag-of-freebies sets new state-of-the-art for real-time object detectors
yolov3 - YOLOv3 in PyTorch > ONNX > CoreML > TFLite
frigate - NVR with realtime local object detection for IP cameras
edgetpu - Coral issue tracker (and legacy Edge TPU API source)
transformers - 🤗 Transformers: State-of-the-art Machine Learning for Pytorch, TensorFlow, and JAX.
YOLOv4 - Port of YOLOv4 to C# + TensorFlow
YOLOv6 - YOLOv6: a single-stage object detection framework dedicated to industrial applications.
BCNet - Deep Occlusion-Aware Instance Segmentation with Overlapping BiLayers [CVPR 2021]
PixelLib - Visit PixelLib's official documentation https://pixellib.readthedocs.io/en/latest/
yolact - A simple, fully convolutional model for real-time instance segmentation.
CATNet - 🛰️ Learning to Aggregate Multi-Scale Context for Instance Segmentation in Remote Sensing Images (TNNLS 2023)