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Local descriptors based random forests for human detection
Author(s) -
Van-Dung Hoang,
My Ha Le,
Hyun-Deok Kang,
Kang-Hyun Jo
Publication year - 2015
Publication title -
science and technology development journal
Language(s) - English
Resource type - Journals
ISSN - 1859-0128
DOI - 10.32508/stdj.v18i3.902
Subject(s) - random forest , support vector machine , local binary patterns , feature (linguistics) , artificial intelligence , computer science , pattern recognition (psychology) , feature vector , histogram of oriented gradients , binary decision diagram , histogram , feature selection , set (abstract data type) , cascade , machine learning , data mining , engineering , image (mathematics) , algorithm , linguistics , philosophy , chemical engineering , programming language
This paper presents a framework based on Random forest using local feature descriptors to detect human in dynamic camera. The contribution presents two issues for dealing with the problem of human detection in variety of background. First, it presents the local feature descriptors based on multi scales based Histograms of Oriented Gradients (HOG) for improving the accuracy of the system. By using local feature descriptors based multiple scales HOG, an extensive feature space allows obtaining high-discriminated features. Second, machine detection system using cascade of Random Forest (RF) based approach is used for training and prediction. In this case, the decision forest based on the optimization of the set of parameters for binary decision based on the linear support vector machine (SVM) technique. Finally, the detection system based on cascade classification is presented to speed up the computational cost.

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