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'''Mean shift''' is a [[non-parametric]] [[feature space|feature-space]] analysis technique, a so-called [[mode seeking]] algorithm.<ref name="PAMI95">{{cite journal
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  | last = Cheng
  | first = Yizong
  | authorlink =
  | title = Mean Shift, Mode Seeking, and Clustering
  | journal = IEEE Transactions on Pattern Analysis and Machine Intelligence
  | volume = 17
  | issue = 8
  | pages = 790–799
  | publisher = IEEE
  | location =
  | date = August 1995
  | url =
  | doi = 10.1109/34.400568
  | id =
  | accessdate = }}</ref> Application domains include [[cluster analysis]] in [[computer vision]] and [[image processing]].<ref name="PAMI02">{{cite journal
  | last = Comaniciu
  | first = Dorin
  | authorlink =
  | coauthors = Peter Meer
  | title = Mean Shift: A Robust Approach Toward Feature Space Analysis
  | journal = IEEE Transactions on Pattern Analysis and Machine Intelligence
  | volume = 24
  | issue = 5
  | pages = 603–619
  | publisher = IEEE
  | location =
  | date = May 2002
  | url =
  | doi = 10.1109/34.1000236
  | id =
  | accessdate = 2008-02-29}}</ref>
 
== History ==
The mean shift procedure was originally presented in 1975 by Fukunaga and Hostetler.<ref name="Fukunaga">{{cite journal
  | last = Fukunaga
  | first = Keinosuke
  | authorlink =
  | coauthors = Larry D. Hostetler
  | title = The Estimation of the Gradient of a Density Function, with Applications in Pattern Recognition
  | journal = IEEE Transactions on Information Theory
  | volume = 21
  | issue = 1
  | pages = 32–40
  | publisher = IEEE
  | location =
  | date = January 1975
  | url =  http://ieeexplore.ieee.org/xpls/abs_all.jsp?arnumber=1055330
  | doi =10.1109/TIT.1975.1055330
  | id =
  | accessdate = 2008-02-29}}</ref>
 
== Overview ==
Mean shift is a procedure for locating the maxima of a [[density function]] given discrete data sampled from that function.<ref name="PAMI95" /> It is useful for detecting the [[Mode (statistics)|mode]]s of this density.<ref name="PAMI95" />  This is an iterative method, and we start with an initial estimate <math> x </math>.  Let a [[Kernel (statistics)|kernel function]] <math> K(x_i - x) </math> be given.  This function determines the weight of nearby points for re-estimation of the mean.  Typically Gaussian kernel on the distance to the current estimate is used, <math> K(x_i - x) = e^{-c||x_i - x||^2} </math>. The weighted mean of the density in the window determined by <math> K </math> is
 
<math> m(x) = \frac{ \sum_{x_i \in N(x)} K(x_i - x) x_i } {\sum_{x_i \in N(x)} K(x_i - x)} </math>
 
where <math> N(x) </math> is the neighborhood of <math> x </math>, a set of points for which <math> K(x) \neq 0 </math>.
 
The mean-shift algorithm now sets <math> x \leftarrow m(x) </math>, and repeats the estimation until <math> m(x) </math> converges.
 
== Mean shift for visual tracking ==
The mean shift algorithm can be used for visual tracking.  The simplest such algorithm would create a confidence map in the new image based on the color histogram of the object in the previous image, and use mean shift to find the peak of a confidence map near the object's old position. The confidence map is a probability density function on the new image, assigning each pixel of the new image a probability, which is the probability of the pixel color occurring in the object in the previous image. A few algorithms, such as [[ensemble tracking]],<ref name="avidan2001">{{cite journal
  | last = Avidan
  | first = Shai
  | authorlink =
  | title = Ensemble Tracking
  | journal = 2005 IEEE Computer Society Conference on Computer Vision and Pattern Recognition (CVPR'05)
  | volume = 2
  | issue =
  | pages =
  | publisher = IEEE
  | location = San Diego, California
  | year = 2005
  | url =
  | doi =
  | id =
  | isbn = 0-7695-2372-2
  | accessdate = }}</ref> CAMshift, expand on this idea.
 
== See also ==
*[[Kernel density estimation]] (KDE)
*[[Kernel (statistics)]]
 
== References ==
{{reflist}}
 
==Code implementations==
* [http://scikit-learn.org/ Scikit-learn library] Numpy/Python implementation uses ball tree for efficient neighboring points lookup
* [http://coewww.rutgers.edu/riul/research/code/EDISON/index.html EDISON library]. C++ implementation of mean-shift-based image segmentation. There is also a [http://www.wisdom.weizmann.ac.il/~bagon/matlab.html#edison Matlab] interface for EDISON.
* [http://sourceforge.net/projects/opencvlibrary/ OpenCV] contains mean-shift implementation via cvMeanShift Method
* [http://code.google.com/p/aiphial/ Aiphial]. Java-based mean-shift implementation for numeric data clustering and image segmentation
* [http://mahout.apache.org Apache Mahout]. An map-reduce based implementation of MeanShift clustering written on Apache Hadoop.
* [http://www.gergltd.com/cse486/project5/ CAMSHIFT project]. A MATLAB implementation of CAMSHIFT algorithm.
* [http://www.orfeo-toolbox.org/doxygen-current/classotb_1_1MeanShiftImageFilter.html OTB MeanShift]. A C++ implementation using the [http://www.orfeo-toolbox.org Orfeo Toolbox].
* [http://rsbweb.nih.gov/ij/plugins/mean-shift.html ImageJ Plug-in]. Image filtering using the mean shift filter.
* [http://code.google.com/p/mean-shift/ Mean-shift google code]. An simple implementation of mean-shift as image filtering tool.
 
==Short lessons==
* [http://www.youtube.com/watch?v=M8B3RZVqgOo Here] a lesson is available from prof. M.Shah on this topic;
 
{{DEFAULTSORT:Mean-Shift}}
[[Category:Computer vision]]
[[Category:Data clustering algorithms]]

Latest revision as of 21:58, 3 January 2015

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