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基于极限学习机框架的高性能视觉跟踪

High-Performance Visual Tracking With Extreme Learning Machine Framework.

作者信息

Deng Chenwei, Han Yuqi, Zhao Baojun

出版信息

IEEE Trans Cybern. 2020 Jun;50(6):2781-2792. doi: 10.1109/TCYB.2018.2886580. Epub 2019 Jan 3.

DOI:10.1109/TCYB.2018.2886580
PMID:30624237
Abstract

In real-time applications, a fast and robust visual tracker should generally have the following important properties: 1) feature representation of an object that is not only efficient but also has a good discriminative capability and 2) appearance modeling which can quickly adapt to the variations of foreground and backgrounds. However, most of the existing tracking algorithms cannot achieve satisfactory performance in both of the two aspects. To address this issue, in this paper, we advocate a novel and efficient visual tracker by exploiting the excellent feature learning and classification capabilities of an emerging learning technique, that is, extreme learning machine (ELM). The contributions of the proposed work are as follows: 1) motivated by the simplicity and learning ability of the ELM autoencoder (ELM-AE), an ELM-AE-based feature extraction model is presented, and this model can provide a compact and discriminative representation of the inputs efficiently and 2) due to the fast learning speed of an ELM classifier, an ELM-based appearance model is developed for feature classification, and is able to rapidly distinguish the object of interest from its surroundings. In addition, in order to cope with the visual changes of the target and its backgrounds, the online sequential ELM is used to incrementally update the appearance model. Plenty of experiments on challenging image sequences demonstrate the effectiveness and robustness of the proposed tracker.

摘要

在实时应用中,一个快速且鲁棒的视觉跟踪器通常应具备以下重要特性:1)对象的特征表示,不仅要高效,还要具有良好的判别能力;2)外观建模,能够快速适应前景和背景的变化。然而,大多数现有的跟踪算法在这两个方面都无法取得令人满意的性能。为了解决这个问题,在本文中,我们通过利用一种新兴学习技术——极限学习机(ELM)的出色特征学习和分类能力,倡导一种新颖且高效的视觉跟踪器。所提出工作的贡献如下:1)受ELM自动编码器(ELM-AE)的简单性和学习能力的启发,提出了一种基于ELM-AE的特征提取模型,该模型能够高效地为输入提供紧凑且有判别力的表示;2)由于ELM分类器的快速学习速度,开发了一种基于ELM的外观模型用于特征分类,并且能够迅速将感兴趣的对象与其周围环境区分开来。此外,为了应对目标及其背景的视觉变化,使用在线序贯ELM来增量更新外观模型。在具有挑战性的图像序列上进行的大量实验证明了所提出跟踪器的有效性和鲁棒性。

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