As I read the YOLO paper it says it makes anchor box with K-means. However, when I see the code implementing this, it seems to fix anchor size as below. I hope you describe what it exactly means or point out my misunderstanding with this.

Thanks, and regards

mask = 6,7,8
***anchors = 10,13,  16,30,  33,23,  30,61,  62,45,  59,119,  116,90,  156,198,  373,326***
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    We need more context than this. Nov 14, 2019 at 2:08
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    Ctrl-F-ing for "means" in my best guess for the paper you're talking about turns up no references to K-means. Nov 14, 2019 at 2:14
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    Also, this isn't Python. Nov 14, 2019 at 2:14
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    Sorry for my impolite question without context. The paper what I referenced is YOLO9000: Better, Faster, Stronger from below link. arxiv.org/pdf/1612.08242.pdf From page 2, there is section with "Dimension Clusters." and it says YOLO 9000 makes anchor box with K means (not hand picked). But from source implementing this, it makes anchor box from below configuration file with pre-fixed number. Please refer below. (github.com/pjreddie/darknet/blob/master/cfg/yolo9000.cfg) So, what I'm curious about is : why it should follow anchor box info without K-means. Thanks again :)
    – puhuk
    Nov 14, 2019 at 2:29
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    The YOLO9000 config file doesn't look anything like what you've quoted in your post. The differences between the YOLO9000 and old config files look consistent with a switch to learned anchor priors. Maybe you were expecting the model to actually perform K-means at runtime? Nov 14, 2019 at 2:34

2 Answers 2


Anchor is like a default bounding box for a cell. It is composed of width and height for each anchor.

anchors = anchor1_width, anchor1_height, anchor2_width, anchor2_height, ..., anchorN_width, anchorN_height

You can generate your own anchors using this code if you are training yolov3 https://github.com/pjreddie/darknet/issues/597#issuecomment-377370922

for yolov2 https://github.com/AlexeyAB/darknet/blob/master/scripts/gen_anchors.py

after you have generated your own anchors, replace default ones with yours in .cfg file


As stated by other answer, the anchor boxes value in cfg file is only the initial value, later it will be resized to the closest predicted object. And you can generate your own anchor boxes using K-means as stated in other answer.

Here's the important thing, the initial value will be resized. Refer to this explanation by AlexeyAB. https://github.com/pjreddie/darknet/issues/568

Anchors are initial sizes (width, height) some of which (the closest to the object size) will be resized to the object size - using some outputs from the neural network (final feature map):


Lines 88 to 89 in 6f6e475

 b.w = exp(x[index + 2*stride]) * biases[2*n]   / w;   
 b.h = exp(x[index + 3*stride]) * biases[2*n+1] / h;  

x[...] - outputs of the neural network

biases[...] - anchors

b.w and b.h result width and height of bounded box that will be showed on the result image

Thus, the network should not predict the final size of the object, but should only adjust the size of the nearest anchor to the size of the object.

In Yolo v3 anchors (width, height) - are sizes of objects on the image that resized to the network size (width= and height= in the cfg-file).

In Yolo v2 anchors (width, height) - are sizes of objects relative to the final feature map (32 times smaller than in Yolo v3 for default cfg-files).

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