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PCA-SIFT: A more distinctive representation for local image descriptors (2004)

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by Yan Ke , Rahul Sukthankar
Citations:237 - 6 self
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BibTeX

@INPROCEEDINGS{Ke04pca-sift:a,
    author = {Yan Ke and Rahul Sukthankar},
    title = {PCA-SIFT: A more distinctive representation for local image descriptors},
    booktitle = {},
    year = {2004},
    pages = {506--513},
    publisher = {}
}

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Abstract

Stable local feature detection and representation is a fundamental component of many image registration and object recognition algorithms. Mikolajczyk and Schmid [14] recently evaluated a variety of approaches and identified the SIFT [11] algorithm as being the most resistant to common image deformations. This paper examines (and improves upon) the local image descriptor used by SIFT. Like SIFT, our descriptors encode the salient aspects of the image gradient in the feature point's neighborhood; however, instead of using SIFT's smoothed weighted histograms, we apply Principal Components Analysis (PCA) to the normalized gradient patch. Our experiments demonstrate that the PCAbased local descriptors are more distinctive, more robust to image deformations, and more compact than the standard SIFT representation. We also present results showing that using these descriptors in an image retrieval application results in increased accuracy and faster matching.

Citations

3103 Distinctive image features from scale-invariant keypoints - Lowe - 2004
1252 A combined corner and edge detector - Harris, Stephens - 1988
1032 Object recognition from local scale-invariant features,” in Computer Vision - Lowe - 1999
774 A performance evaluation of local descriptors - Mikolajczyk, Schmid - 2003
698 Learning the parts of objects by non-negative matrix factorization - Lee, Seung - 1999
695 A.: Face recognition using eigenfaces - TURK, PENTLAND - 1991
688 The Design and Use of Steerable Filters - Freeman, Adelson - 1991
646 Object class recognition by unsupervised scale-invariant learning - Fergus, Perona, et al. - 2003
245 Indexing based on scale invariant interest points - Mikolajczyk, Schmid - 2001
213 Representation of local geometry in the visual system - KOENDERINK, DOORN - 1987
199 Learning a Sparse Representation for Object Detection - Agarwal, Roth - 2002
92 Principal Component Analysis - Joliffe - 1986
44 Generalizations of principal component analysis, optimization problems, and neural networks - Karhunen, Joutsensalo - 1995
42 Applications of the karhunen-loeve expansion to feature selection and ordering - Fukunaga, Koontz - 1970
41 Affine/photometric invariants for planar intensity patterns - Gool, Moons, et al. - 1996
28 Multi-view matching for unordered image sets - Schaffalitzky, Zisserman - 2002
16 Detection of 3D objects in cluttered scenes using hierarchical eigenspace - Murase, Nayar - 1997
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