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Program Information

Recursive K-Means Filter for Preserving Signals of Interest

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A Chu

A Chu*, P Yan , R Shih , C Wuu , Columbia University, New York, NY

Presentations

SU-F-R-43 (Sunday, July 31, 2016) 3:00 PM - 6:00 PM Room: Exhibit Hall


Purpose:
To use recursive cluster analysis to filter noises and artifacts out of useful signals. The method was applied to CT or CBCT for preserving interested low Hounsfield Unit (HU) signals such as lung tissues while the HU of lung tissues is often overlapped with CT (or CBCT) artifacts.

Methods:
Cluster analysis is to search for the similarity among data points, which could employ multi-dimensional techniques. For our purpose, we searched for a robust, fast, and automatic process for sorting interested low HU object in CT, Therefore, 1-D cluster analysis is suitable for the purpose. However the 1-D cluster analysis might not be able to sensitively separate the groups with overlap in values, for example, lung tissue and low-HU CT artifacts. We found the recursive k-mean (initialized by k-mean++ over Euclidean distance) with division of small size groups can efficiently strip the low noises out and reveal the interested group by a repetitive fashion.

Results:
The algorithm of repetitively regrouping and filtering with a size of small division can effectively remove the low-HU values of artifacts. Because artifacts are usually scattered separate groups, the lung tissues buried in the low-HU groups can be revealed with an appropriate recursive steps.

Conclusion:
The filtering technique is efficient, robust and can be applied to many different applications as long as the distribution of interested signals can be considered as a cluster in value.


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