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I'm working with BOW object detection and I'm working on the encoding stage. I have seen some implementations that uses kd-tree in the encoding stage, but most writing suggest that kmeans clustering is the way to go. What is the difference between the two?

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up vote 3 down vote accepted

kd-tree AFAIK is used for the labeling phase, its much faster, when clustering over a large number of groups, hundreds if not thousands, then the naive approach of simply taking the argmin of all the distances to each group, k-means is the actual clustering algorithm, its fast though not always very precise, some implementations return the groups, while others the groups and the labels of the training data set, this is what I ussually use in conjunction with

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so just to clarify, you would use kmeans to quantize your image descriptors. Then you would make a kdtree out of those descriptors so that you can search for the closest neighbor in object recognition? – mugetsu Jun 18 '12 at 22:07
@mugetsu Then you would make a kdtree out of those descriptors pretty much, I've done some benchmarks and well kdtree blows all my optimizations out of the water when working with really large number of groups ... I recommend you simply run some tests :) – Samy Vilar Jun 18 '12 at 22:11
so by using kdtree, do you skip having histograms and SVMs? I'm confused on how this works.… – mugetsu Jun 18 '12 at 22:27
@mugetsu check out I couldn't find an easier tutorial ... – Samy Vilar Jun 18 '12 at 23:05
Updating above link: – saurabheights Dec 19 '15 at 6:08

In object detection, k-means is used to quantize descriptors. A kd-tree can be used to search for descriptors with or without quantization. Each approach has its pros and cons. Specifically, kd-trees are not much better than brute-force search when the number of descriptor dimensions exceeds 20.

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i'm using SIFT descriptors, 128 dimensions, so I guess in my encoding phase I should only be quantizing with k-means? – mugetsu Jun 18 '12 at 22:03
I have had achieved great performance using just hierarchical k-means clustering with vocabulary trees and brute-force search at each level. If I needed to further improve performance, I would have looked into using either locality-sensitive hashing or kd-trees combined with dimensionality reduction via PCA. – Don Reba Jun 18 '12 at 23:11
+1 for dimensionality reduction via PCA – Samy Vilar Jun 18 '12 at 23:32
I'm recommending on FLANN. It will do the analysis for you and give you the best algorithm that fits your specific data set and memory / performance needs. See – rursw1 Jun 2 '13 at 11:21

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