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Embedding high-level information into low level vision: Efficient object search in clutter

机译:将高级信息嵌入到低级视觉中:高效的杂物搜索

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The ability to search visually for objects of interest in cluttered environments is crucial for robots performing tasks in a multitude of environments. In this work, we propose a novel visual search algorithm that integrates high-level information of the target object - specifically its size and shape, with a recently introduced visual operator that rapidly clusters potential edges based on their coherence in belonging to a possible object. The output is a set of fixation points that indicate the potential location of the target object in the image. The proposed approach outperforms purely bottom-up approaches - saliency maps of Itti et al. [15], and kernel descriptors of Bo et al. [2], over two large datasets of objects in clutter collected using an RGB-Depth camera.
机译:在混乱的环境中视觉搜索感兴趣的对象的能力对于机器人在多种环境中执行任务至关重要。在这项工作中,我们提出了一种新颖的视觉搜索算法,该算法将目标对象的高级信息(尤其是其大小和形状)与最近引入的视觉运算符相集成,该视觉运算符根据潜在边缘在属于可能对象时的连贯性快速对其进行聚类。输出是一组固定点,这些固定点指示目标对象在图像中的潜在位置。所提出的方法优于纯自下而上的方法-Itti等人的显着性图。 [15],和Bo等人的内核描述符。 [2],是使用RGB深度相机收集的两个杂乱物体的大型数据集。

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