通过目标跟踪改进视觉地标的选择和检测

P. Espinace, A. Soto
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引用次数: 1

摘要

视觉标志的无监督选择和后验识别是移动机器人非常宝贵的感知能力。最近,我们提出了一个旨在通过将自底向上的数据驱动方法与由高级语义表示提供的自顶向下的反馈相结合来实现此功能的系统。自下而上的方法基于三个主要机制:视觉注意、区域分割和地标表征。自上而下的反馈基于两个信息源:i)对机器人位置的估计,减少与先前选择的地标的潜在匹配的搜索范围;ii)一组权重,根据先前的识别结果,控制不同分割算法在识别每个地标时的影响。在本文中,我们探讨了通过为每个选定的地标包括视觉跟踪步骤来扩展我们以前的工作的好处。我们的直觉是,包含跟踪步骤可以通过关联和选择来自其最重要视图的信息来帮助改进每个地标的模型。此外,它还可以帮助避免与选择虚假地标相关的问题。我们的研究结果证实了这些直觉,表明跟踪步骤的加入显著提高了地标识别的召回率。
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Improving the selection and detection of visual landmarks through object tracking
The unsupervised selection and posterior recognition of visual landmarks is a highly valuable perceptual capability for a mobile robot. Recently, we proposed a system that aims to achieve this capability by combining a bottom-up data driven approach with top-down feedback provided by high level semantic representations. The bottom-up approach is based on three main mechanisms: visual attention, area segmentation, and landmark characterization. The top-down feedback is based on two information sources: i) An estimation of the robot position that reduces the searching scope for potential matches with previously selected landmarks, ii) A set of weights that, according to the results of previous recognitions, controls the influence of different segmentation algorithms in the recognition of each landmark. In this paper we explore the benefits of extending our previous work by including a visual tracking step for each of the selected landmarks. Our intuition is that the inclusion of a tracking step can help to improve the model of each landmark by associating and selecting information from its most significant views. Furthermore, it can also help to avoid problems related to the selection of spurious landmarks. Our results confirm these intuitions by showing that the inclusion of the tracking step produces a significant increase in the recall rate for landmark recognition.
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