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A SINGLE-OBJECT TRACKING METHOD FOR ROBOTS USING OBJECT-BASED VISUAL ATTENTION

机译:基于目标视觉的机器人单目标跟踪方法

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摘要

It is a quite challenging problem for robots to track the target in complex environment due to appearance changes of the target and background, large variation of motion, partial and full occlusion, motion of the camera and so on. However, humans are capable to cope with these difficulties by using their cognitive capability, mainly including the visual attention and learning mechanisms. This paper therefore presents a single-object tracking method for robots based on the object-based attention mechanism. This tracking method consists of four modules: pre-attentive segmentation, top-down attentional selection, post-attentive processing and online learning of the target model. The pre-attentive segmentation module first divides the scene into uniform proto-objects. Then the top-down attention module selects one proto-object over the predicted region by using a discriminative feature of the target. The post-attentive processing module then validates the attended proto-object. If it is confirmed to be the target, it is used to obtain the complete target region. Otherwise, the recovery mechanism is automatically triggered to globally search for the target. Given the complete target region, the online learning algorithm autonomously updates the target model, which consists of appearance and saliency components. The saliency component is used to automatically select a discriminative feature for top-down attention, while the appearance component is used for bias estimation in the top-down attention module and validation in the post-attentive processing module. Experiments have shown that this proposed method outperforms other algorithms without using attention for tracking a single target in cluttered and dynamically changing environment.
机译:由于目标和背景的外观变化,运动的巨大变化,部分和完全遮挡,摄像机的运动等等,在复杂环境中机器人跟踪目标是一个非常具有挑战性的问题。然而,人类有能力通过使用其认知能力来应对这些困难,主要包括视觉注意力和学习机制。因此,本文提出了一种基于基于对象的注意力机制的机器人单对象跟踪方法。这种跟踪方法包括四个模块:注意模型分割,自上而下的注意选择,注意模型处理和目标模型的在线学习。注意前的分割模块首先将场景划分为统一的原型对象。然后,自上而下的注意模块通过使用目标的判别特征在预测区域中选择一个原型对象。然后,关注后处理模块验证关注的原始对象。如果确定是目标,则将其用于获取完整的目标区域。否则,将自动触发恢复机制以全局搜索目标。给定完整的目标区域,在线学习算法会自动更新目标模型,该模型由外观和显着性组件组成。显着性组件用于自动选择自上而下关注的判别特征,而外观组件用于自上而下关注模块中的偏差估计和关注后处理模块中的验证。实验表明,该方法优于其他算法,无需在混乱且动态变化的环境中跟踪单个目标即可使用。

著录项

  • 来源
    《International journal of humanoid robotics》 |2012年第4期|1250030.1-1250030.36|共36页
  • 作者单位

    School of Automation, Beijing Institute of Technology Beijing, 100081, China Department of Electrical and Computer Engineering Dalhousie University Halifax, NS, B3J 2X4, Canada;

    Faculty of Engineering and Applied Science Memorial University of Newfoundland St. John's, NL, A IB 3X5, Canada;

    Faculty of Engineering and Applied Science Memorial University of Newfoundland St. John's, NL, A IB 3X5, Canada;

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  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

    visual tracking; object-based visual attention; robotics;

    机译:视觉跟踪;基于对象的视觉注意力;机器人技术;
  • 入库时间 2022-08-17 13:39:10

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