Compare YOLOv3, v4, and v10

  Рет қаралды 2,861

Stephane Charette

Stephane Charette

Ай бұрын

Compare YOLOv3, YOLOv4, and YOLOv10.
- Video that describes how to size Darknet/YOLO networks: • Sizing Darknet/YOLO ne...
- Darknet/YOLO FAQ: www.ccoderun.ca/programming/y...
- Darknet: github.com/hank-ai/darknet
- DarkHelp: github.com/stephanecharette/D...
- DarkMark: github.com/stephanecharette/D...
- LEGO gears dataset: www.ccoderun.ca/programming/2...
- YOLOv10: github.com/THU-MIG/yolov10

Пікірлер: 17
@xthesayuri5756
@xthesayuri5756 Ай бұрын
First, the confidence levels being different is simply a result of the different loss functions used. Modern yolos need much lower confidence values or longer training but as a result dont have as many false positives and false negatives and better bounding boxes. Second, the speed difference can be explained by the different image sizes used. 640x480 for Yolov10 are roughly 10 times more pixels than 224x160 for yolov3 and yolov4.
@borystyran3797
@borystyran3797 Ай бұрын
Hey Stephane. Thanks for your time putting up this video. Results are certainly interesting. Keep up the great work that you do with darknet !
@strakhov
@strakhov Ай бұрын
Thanks for your ongoing contribution to the fastest and most reliable object detection framework, Stephane!
@inneralien
@inneralien Ай бұрын
Another great video. Thanks Stephane!
@wave47
@wave47 Ай бұрын
Good job
@rayanghifani
@rayanghifani Ай бұрын
Great comparison. Is there any way to run instance segmentation with yolov4 or anything open source?
@alexmac2724
@alexmac2724 Ай бұрын
Good good stuff
@Magentak
@Magentak Ай бұрын
Definitely faster inference, but the lack of parameters hinders its accuracy harshly.
@StephaneCharette
@StephaneCharette 28 күн бұрын
I'm guessing you didn't watch the video? Cause the accuracy is definitely higher with Darknet/YOLO.
@Magentak
@Magentak 28 күн бұрын
@@StephaneCharette That is exactly my point. Does not YOLOv10n have smaller parameter size than YOLOv4-tiny?
@SaidMetiche-qy9hb
@SaidMetiche-qy9hb 28 күн бұрын
This is a very constrained example, I'm interested in how this would be able to detect people in a crowd
@StephaneCharette
@StephaneCharette 28 күн бұрын
I didn't train this network to find people and crowds. It was trained to find the things you see in the video. Like all customers who ask me to train neural networks for them, they typically want to find specific objects in machinery, or on a conveyor belt, not MSCOCO-style "find 80 random classes of things."
@Gka783-tu1li
@Gka783-tu1li Ай бұрын
is yolov4 still the best, compared to other versions?
@StephaneCharette
@StephaneCharette Ай бұрын
Watch the video above and let us know what you think.
@Gka783-tu1li
@Gka783-tu1li Ай бұрын
@@StephaneCharette Okay, I watched the video, but shouldn't the new versions be better to yolov4 logically? (I use Google translate, sorry for any translation errors. )
@StephaneCharette
@StephaneCharette Ай бұрын
@@Gka783-tu1li Darknet/YOLO with YOLOv4 is still better than YOLOv5, v6, v7, v8, v9, and now v10.
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