DocumentCode
2174394
Title
Selection of scale-invariant parts for object class recognition
Author
Dorko ; Schmid, C.
Author_Institution
GRAVIR-CNRS, INRIA, Montbonnot, France
fYear
2003
fDate
13-16 Oct. 2003
Firstpage
634
Abstract
We introduce a novel method for constructing and selecting scale-invariant object parts. Scale-invariant local descriptors are first grouped into basic parts. A classifier is then learned for each of these parts, and feature selection is used to determine the most discriminative ones. This approach allows robust pan detection, and it is invariant under scale changes-that is, neither the training images nor the test images have to be normalized. The proposed method is evaluated in car detection tasks with significant variations in viewing conditions, and promising results are demonstrated. Different local regions, classifiers and feature selection methods are quantitatively compared. Our evaluation shows that local invariant descriptors are an appropriate representation for object classes such as cars, and it underlines the importance of feature selection.
Keywords
feature extraction; object recognition; pattern classification; car detection task; feature selection; object class recognition; pattern classifier; scale-invariant local descriptor; scale-invariant object part; Brightness; Character recognition; Computer vision; Feature extraction; Image recognition; Image segmentation; Machine learning; Object detection; Robustness; Testing;
fLanguage
English
Publisher
ieee
Conference_Titel
Computer Vision, 2003. Proceedings. Ninth IEEE International Conference on
Conference_Location
Nice, France
Print_ISBN
0-7695-1950-4
Type
conf
DOI
10.1109/ICCV.2003.1238407
Filename
1238407
Link To Document