scholarly journals SAFS: Object Tracking Algorithm Based on Self-Adaptive Feature Selection

Sensors ◽  
2021 ◽  
Vol 21 (12) ◽  
pp. 4030
Author(s):  
Wenhua Guo ◽  
Jiabao Gao ◽  
Yanbin Tian ◽  
Fan Yu ◽  
Zuren Feng

Object tracking is one of the most challenging problems in the field of computer vision. In challenging object tracking scenarios such as illumination variation, occlusion, motion blur and fast motion, existing algorithms can present decreased performances. To make better use of the various features of the image, we propose an object tracking method based on the self-adaptive feature selection (SAFS) algorithm, which can select the most distinguishable feature sub-template to guide the tracking task. The similarity of each feature sub-template can be calculated by the histogram of the features. Then, the distinguishability of the feature sub-template can be measured by their similarity matrix based on the maximum a posteriori (MAP). The selection task of the feature sub-template is transformed into the classification task between feature vectors by the above process and adopt modified Jeffreys’ entropy as the discriminant metric for classification, which can complete the update of the sub-template. Experiments with the eight video sequences in the Visual Tracker Benchmark dataset evaluate the comprehensive performance of SAFS and compare them with five baselines. Experimental results demonstrate that SAFS can overcome the difficulties caused by scene changes and achieve robust object tracking.

Author(s):  
Mohammed Lahraichi ◽  
Khalid Housni ◽  
Samir Mbarki

In the recent decades, several methods have been developed to extract moving objects in the presence of dynamic background. However, most of them use a global threshold, and ignore the correlation between neighboring pixels. To address these issues, this paper presents a new approach to generate a probability image based on Kernel Density Estimation (KDE) method, and then apply the Maximum A Posteriori in the Markov Random Field (MAP-MRF) based on probability image, so as to generate an energy function, this function will be minimized by the binary graph cut algorithm to detect the moving pixels instead of applying a thresholding step. The proposed method was tested on various video sequences, and the obtained results showed its effectiveness in presence of a dynamic scene, compared to other background subtraction models.


Author(s):  
Darshan Venkatrayappa ◽  
Désiré Sidibé ◽  
Fabrice Meriaudeau ◽  
Philippe Montesinos

2011 ◽  
Vol 1 (2) ◽  
pp. 89
Author(s):  
Dina Nurul Fitria ◽  
Ikhwan B. Zarkasi ◽  
Rose Maulidiyatul H

<p style="text-align: justify;" align="center">Banyak cara untuk dapat mendeteksi keamanan sebuah wilayah tertentu. Salah satu cara pengamanan yang bisa digunakan adalah dengan menggunakan pemantauan berbasis video pengawasan (<em>video surveillance</em>). Sebenarnya, video pengawasan sudah banyak digunakan di Indonesia. Tetapi, umumnya video pengawasan ini hanya mampu merekam gambar, tanpa ada kemampuan pintar yakni, <em>object tracking, object recognition</em> dan <em>object analyzing</em>. Sehingga, hasil yang diharapkan kurang maksimal dan belum bisa membantu tugas pengawasan secara keseluruhan. Paper ini bertujuan untuk membuat algoritma dari <em>object tracking</em> yang ada pada video pengawasan sebagai rujukan pengembangan video pengawasan dengan kemampuan <em>object recognition</em> dan <em>object analyzing</em>. Masalah utama yang sering muncul dalam pembuatan <em>object tracking</em> adalah ketika terjadi<em> occlusion</em> (tumpang tindih) antara dua <em>object </em>dalam sebuah frame. Pada saat <em>occlusion</em>, <em>object </em>yang sama pada frame yang berbeda kemungkinan dapat dikenali sebagai<em> object</em> yang berbeda. Sehingga, proses <em>object tracking</em> akan menjadi terganggu. <em>Bayesian Networks</em> memungkinkan untuk membandingkan data yang didapat dari masing-masing <em>object </em>yang ada <em>(likelihood)</em> dengan data awal yang telah dimiliki <em>(prior)</em>, dengan menghitung <em>Maximum A-Posteriori Probability</em>(MAP) yang dimiliki, sehingga <em>object </em>yang sama pada frame yang berbeda tetap akan dikenali sebagai <em>object</em> yang sama</p><h6 style="text-align: center;"><strong> </strong><strong>Abstract</strong></h6><p style="text-align: justify;" align="center">There are many ways/technique to detect the security/safety of fixed area. One of security technique that can be used is by using monitoring based on Video surveillance. In fact, this monitoring video has already been used in Indonesia. But, video surveillance, commonly, just can record images without any smart abilities, such as object tracking, object recognition and object analyzing. So, the expected result is not optimal and still not be able to help monitoring role totally. This research is aimed to make the algorithm of object trackingin video surveillance, in order to be reference for development of video surveillance with ability of object recognition and object analyzing. The main problem that frequently comes up on the making of object tracking is occlusion between two objects in a single frame. When occlusion is happened, same object in different frame probably can be recognized as two different objects. So, the process of object tracking can be disturbed. Bayesian Network is enable to compare data that got from every object (likelihood) with prior data that has already been provided by counting its Maximum A-Posteriori Probability (MAP), so same object in different frame are still be able to be recognized as same object.</p>


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