Paper
13 November 2001 Volume correlation filters for recognizing patterns in 3D data
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Abstract
Correlation filters are ideally suited for recognizing patterns in three-dimensional (3D) data. Whereas most model-based techniques tend to measure the overall dimensions of objects and their larger features, correlation filters can readily (and efficiently) exploit intricate surface details, the gray values of surfaces as well as internal structure, if any. Thus correlation filters may be the preferred approach in scenarios when intensity and range data are both available, or when the internal structure of an object has been mapped (e.g. tomography). In this paper, we outline the development of filters for 3D data that we refer to as Volume Correlation Filters (VCFs), illustrate their use with range images of an object, and outline future work for the development of 3D correlation techniques.
© (2001) COPYRIGHT Society of Photo-Optical Instrumentation Engineers (SPIE). Downloading of the abstract is permitted for personal use only.
Abhijit Mahalanobis, Bhagavatula Vijaya Kumar, and Alan J. Van Nevel "Volume correlation filters for recognizing patterns in 3D data", Proc. SPIE 4471, Algorithms and Systems for Optical Information Processing V, (13 November 2001); https://doi.org/10.1117/12.449356
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KEYWORDS
Image filtering

3D image processing

Filtering (signal processing)

LIDAR

3D modeling

3D metrology

Binary data

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