Recognition By Functional Parts
Recognition by Functional Parts.
CVIU, 62(2):164-176, 1995
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Abstract
We present an approach to function-based object recognition that reasons about the functionality of an object's intuitive parts. We extend the popular “recognition by parts” shape recognition framework to support “recognition by functional parts”, by combining a set of functional primitives and their relations with a set of abstract volumetric shape primitives and their relations. Previous approach have relied on more global object features, often ignoring the problem of object segmentation and thereby restricting themselves to range images of unoccluded scenes. We show how these shape primitives and relations can be easily recovered from super quadric ellipsoids which, in turn, can be recovered from either range or intensity images of occluded scenes. Furthermore, the proposed framework supports both unexpected (bottom-up) object recognition and expected (top-down) object recognition. We demonstrate the approach on a simple domain by recognizing a restricted class of hand-tools from 2D images.
Keywords
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Bibtex Entry
@article{RivlinDR95a,
title = {Recognition by Functional Parts},
author = {Ehud Rivlin and Sven J. Dickinson and Azriel Rosenfeld},
year = {1995},
month = {September},
journal = {CVIU},
volume = {62},
number = {2},
pages = {164-176},
keywords = {Function},
abstract = {We present an approach to function-based object recognition that reasons about the functionality of an object's intuitive parts. We extend the popular “recognition by parts” shape recognition framework to support “recognition by functional parts”, by combining a set of functional primitives and their relations with a set of abstract volumetric shape primitives and their relations. Previous approach have relied on more global object features, often ignoring the problem of object segmentation and thereby restricting themselves to range images of unoccluded scenes. We show how these shape primitives and relations can be easily recovered from super quadric ellipsoids which, in turn, can be recovered from either range or intensity images of occluded scenes. Furthermore, the proposed framework supports both unexpected (bottom-up) object recognition and expected (top-down) object recognition. We demonstrate the approach on a simple domain by recognizing a restricted class of hand-tools from 2D images.}
}