Pedestrian Detection Based on Multi-Block Local Binary Pattern and Biologically Inspired Feature
Author(s) -
Aminou Halidou,
Xinge You,
Bachirou Bogno
Publication year - 2014
Publication title -
computer and information science
Language(s) - English
Resource type - Journals
eISSN - 1913-8997
pISSN - 1913-8989
DOI - 10.5539/cis.v7n1p125
Subject(s) - computer science , pedestrian detection , block (permutation group theory) , artificial intelligence , feature (linguistics) , local binary patterns , pattern recognition (psychology) , image (mathematics) , relation (database) , binary number , object detection , pedestrian , computer vision , object (grammar) , data mining , mathematics , histogram , philosophy , geometry , arithmetic , transport engineering , engineering , linguistics
Nowadays pedestrian detection plays an important role in security and driving assistance. Detecting moving object is complex, and some of the detection methods are comparatively ineffective and slow. In relation to human detection it is very useful to combine independent information sources, such as appearance and motion. To achieve acceptable detection performance, we propose inter-frames differencing image to compute the region of interest, and MB-BIF to extract features. The MB-BIF approach combines two well-known methods, the Multi-Block Local Binary Pattern and Biologically Inspired Method. We evaluate the performance of different features descriptors on different databases, and our method shows good efficiency.
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