I'm training an object detector using Yolov3 on my custom dataset. Traditionally in Yolo you have a variety of object classes so you get a good mix of anchors. In my case, I only have one object class and it has pretty similar dimensions. So when I cluster the dimensions using K-means, I get 9 anchors of pretty similar size... which seems counterproductive.

In fact, I tried with some random anchor sizes that are not all similar and got better results than with 9 similar anchors. So I wonder, what's the best strategy for anchors for 1 class object detector?

1 Answer 1


This is what author says about anchor boxes here:

Only if you are an expert in neural detection networks - recalculate anchors for your dataset for width and height from cfg-file: darknet.exe detector calc_anchors data/obj.data -num_of_clusters 9 -width 416 -height 416 then set the same 9 anchors in each of 3 [yolo]-layers in your cfg-file. But you should change indexes of anchors masks= for each [yolo]-layer, so for YOLOv4 the 1st-[yolo]-layer has anchors smaller than 30x30, 2nd smaller than 60x60, 3rd remaining, and vice versa for YOLOv3. Also you should change the filters=(classes + 5)* before each [yolo]-layer. If many of the calculated anchors do not fit under the appropriate layers - then just try using all the default anchors.

So to train single class object detector where in object dimensions are pretty similar, then:

  1. Use default anchor boxes as stated above
  2. Use random=0 in the cfg

To understand anchor box concept, go through this discussion.

Also since Yolov4 is available now, suggest you to use that for better accuracy/mAP. If you want to stick to Yolov3, use Yolov3-spp or Yolov3_5l for improved results.

  • Thanks, I'm actually using a custom Keras implementation of Yolov3. I tried with default anchors but they don't work as well. Commented Jul 30, 2020 at 16:44
  • @MikeAzatov I see! When it comes to Keras Yolov3, I have used this repo. For me both default anchors and generated anchors have worked well, but it was for multiple classes, haven't tried single class detector with this repo though. For single class have used this repo and has worked well with default anchors. Commented Jul 30, 2020 at 17:41
  • Thanks for the info. I'm using this one: github.com/qqwweee/keras-yolo3. I'm getting decent results but just wanted to get optimal. Currently trying to figure out Yolov4. Do you know of a good repo? Preferable in Keras? Commented Jul 30, 2020 at 17:45
  • Ah okay! only Keras repo that I came across for Yolov4 is this one. If you're okay to not use Keras then the repo I have mentioned earlier is the best one in terms of flexibility, features and support Commented Jul 30, 2020 at 17:51
  • Thanks, I'll give it a shot. I struggled to get the official tensorlfow implementation of Yolov4 to work thus far. Commented Jul 30, 2020 at 17:57

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