Learning Multi-Domain Convolutional Network for RGB-T Visual Tracking

Xingming Zhang, Xuehan Zhang, Xuedan Du, Xiangming Zhou, Jun Yin
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引用次数: 16

Abstract

Object tracking is one of the challenging problems in the field of computer vision. Affected by the unstructured environments, for example, the occlusion, noise, and light, These factors can affect the appearance of the specific object and result in failures when tracking specific objects. To address this issue, we propose a novel visual tracking method based on multimodal convolutional network learning. Our framework adopts a parallel structure, which consists of two shallow convolutional neural networks. First, the parallel network is used to draw the different features of the RGB- T (RGB and thermal) data separately. Second, this two kind of features are mixed together and finally the mixed feature is sent to domain-specific layers for binary classification and identification of the targets. We perform comprehensive experiments on RGBT234 visual data and the results prove that the proposed visual tracking method improves the effects significantly through the use of multi-modal features, which illustrates that our method is competitive in performances against with the state-of-the-art tracking algorithms.
学习多域卷积网络用于RGB-T视觉跟踪
目标跟踪是计算机视觉领域中具有挑战性的问题之一。受非结构化环境的影响,例如遮挡、噪声和光线,这些因素会影响特定目标的外观,导致跟踪特定目标时失败。为了解决这个问题,我们提出了一种基于多模态卷积网络学习的视觉跟踪方法。我们的框架采用并行结构,由两个浅卷积神经网络组成。首先,利用并行网络分别绘制RGB- T (RGB和thermal)数据的不同特征;其次,将这两种特征混合在一起,最后将混合特征送到特定领域层进行目标的二值分类和识别。我们在RGBT234视觉数据上进行了全面的实验,结果证明所提出的视觉跟踪方法通过使用多模态特征显著提高了效果,这表明我们的方法在性能上与最先进的跟踪算法具有竞争力。
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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