Humanrecognition Using ‘Pso-Ofa’ In Low Resolution Videos

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K.Ranga Narayana, et. al.

Abstract

In present scenario, tracking of target in videos with low resolution is most important task.  The problem aroused due to lack of discriminatory data that have low visual visibility of the moving objects. However, earlier detection methods often extract explanations around fascinating points of space or exclude mathematical features in moving regions, resulting in limited capabilities to detect better video functions. To overcome the above problem, in this paper a novel method which recognizes a person from low resolution videos is proposed. A Three step process is implemented in which during the first step, the video data acquired from a low-resolution video i.e. from three different datasets. The acquired video is divided into frames and converted into gray scale from RGB. Secondly, background subtraction is performed using LBP and thereafter Histogram of Optical Flow (HOF) descriptors is extracted from optical flow images for motion estimation. In the third step, the eigen features are extracted and optimized using particle swarm optimization (PSO) model to eliminate redundant information and obtain optimized features from the video which is being processed. Finally to find a person from low resolution videos, the features are classified by Support Vector Machine (SVM) and parameters are evaluated. Experimental results are performed on VIRAT, Soccer and KTH datasets and demonstrated that the proposed detection approach is superior to the previous method

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How to Cite
et. al., K. N. . (2021). Humanrecognition Using ‘Pso-Ofa’ In Low Resolution Videos. Turkish Journal of Computer and Mathematics Education (TURCOMAT), 12(11), 697–703. https://doi.org/10.17762/turcomat.v12i11.5952 (Original work published May 10, 2021)
Section
Research Articles