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Using local binary patterns for object detection in images
Author(s) -
Karel Petránek,
Pavel Janečka,
Jan Vaněk
Publication year - 2015
Publication title -
global journal of computer sciences theory and research
Language(s) - English
Resource type - Journals
ISSN - 2301-2587
DOI - 10.18844/gjcs.v5i1.24
Subject(s) - local binary patterns , artificial intelligence , computer science , scale invariant feature transform , discriminative model , computer vision , feature extraction , pattern recognition (psychology) , feature (linguistics) , object detection , object class detection , feature detection (computer vision) , image processing , image (mathematics) , histogram , face detection , facial recognition system , linguistics , philosophy
The article discusses a texture operator called Local Binary Patterns (LBP) and its applications in image processing and object detection. We provide a description of the algorithm for computing LBP together with a rationale for using LBP as a feature for object detection and image recognition. Based on the algorithm we show that LBP features have a low computational overhead compared to more complicated image features such as the commonly used SIFT or SURF features or neural network based approaches because they exploit the use of extremely fast bitwise and integer operations of the CPU. We demonstrate that LBP is robust to changes in brightness, contrast, image rotation, image scale. We develop two enhancements for LBP that improve its resistance to camera noise and enhance the discriminative power of LBP when it is used as a feature for machine learning algorithms. We present the results on a challenging real-world object detection task.

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