DEEP EXTREME TRACKER BASED ON BOOTSTRAP PARTICLE FILTER

A. A. Gunawan, M. I. Fanany, W. Jatmiko
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引用次数: 5

Abstract

Visual tracking in mobile robots have to track various target objects in fast processing, but existing state-of-the-art methods only use specific image feature which only suitable for certain target objects. In this paper, we proposed new approach without depend on specific feature. By  using deep learning, we can learn essential features of many of the objects and scenes found in the real world. Furthermore, fast visual tracking can be achieved by using Extreme Learning Machine (ELM). The developed tracking algorithm is based on bootstrap particle filter. Thus the observation model of particle filter is enhanced into two steps: offline training step and online tracking step. The offline training stage is carried out by training one kind of deep learning techniques: Stacked Denoising Autoencoder (SDAE) with auxiliary image data. During the online tracking process, an additional classification layer based on ELM is added to the encoder part of the trained. Using experiments, we found (i) the specific feature  is only suitable for certain target objects (ii) the running time of the tracking algorithm can be improved by using ELM with regularization and intensity adjustment in online step, (iii) dynamic model is crucial for object tracking, especially when adjusting the diagonal covariance matrix values. Preliminary experimental results are provided. The algorithm is still restricted to track single object and will extend to track multiple object and will enhance by creating the advanced dynamic model. These are remaining for our future works.
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基于自举粒子滤波的深度极值跟踪器
移动机器人的视觉跟踪需要在快速处理过程中跟踪各种目标物体,但现有的先进方法只使用特定的图像特征,只适用于特定的目标物体。在本文中,我们提出了一种不依赖于特定特征的新方法。通过使用深度学习,我们可以学习到现实世界中许多物体和场景的基本特征。此外,使用极限学习机(ELM)可以实现快速视觉跟踪。所开发的跟踪算法基于自举粒子滤波。从而将粒子滤波的观测模型增强为离线训练和在线跟踪两个步骤。离线训练阶段通过训练一种深度学习技术:基于辅助图像数据的堆叠去噪自动编码器(Stacked Denoising Autoencoder, SDAE)来完成。在在线跟踪过程中,在训练的编码器部分增加了一个基于ELM的额外分类层。通过实验,我们发现:(1)特定的特征只适用于特定的目标对象;(2)在在线步长中使用正则化和强度调节的ELM可以改善跟踪算法的运行时间;(3)动态模型对目标跟踪至关重要,特别是在调整对角协方差矩阵值时。给出了初步的实验结果。该算法目前仍局限于单目标跟踪,并将扩展到多目标跟踪,并通过建立先进的动态模型进行增强。这些都是为我们未来的工作留下的。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
Journal of Theoretical and Applied Information Technology
Journal of Theoretical and Applied Information Technology Computer Science-Computer Science (all)
CiteScore
1.10
自引率
0.00%
发文量
38
期刊介绍: Journal of Theoretical and Applied Information Technology published since 2005 (E-ISSN 1817-3195 / ISSN 1992-8645) is an open access International refereed research publishing journal with a focused aim on promoting and publishing original high quality research dealing with theoretical and scientific aspects in all disciplines of Information Technology. JATIT is an international scientific research journal focusing on issues in information technology research. A large number of manuscript inflows, reflects its popularity and the trust of world''s research community. JATIT is indexed with major indexing and abstracting organizations and is published in both electronic and print format.
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