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Fast and Robust Generation of Feature Maps for Region-Based Visual Attention

机译:快速可靠地生成基于区域的视觉注意的特征图

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Visual attention is one of the important phenomena in biological vision which can be followed to achieve more efficiency, intelligence, and robustness in artificial vision systems. This paper investigates a region-based approach that performs pixel clustering prior to the processes of attention in contrast to late clustering as done by contemporary methods. The foundation steps of feature map construction for the region-based attention model are proposed here. The color contrast map is generated based upon the extended findings from the color theory, the symmetry map is constructed using a novel scanning-based method, and a new algorithm is proposed to compute a size contrast map as a formal feature channel. Eccentricity and orientation are computed using the moments of obtained regions and then saliency is evaluated using the rarity criteria. The efficient design of the proposed algorithms allows incorporating five feature channels while maintaining a processing rate of multiple frames per second. Another salient advantage over the existing techniques is the reusability of the salient regions in the high-level machine vision procedures due to preservation of their shapes and precise locations. The results indicate that the proposed model has the potential to efficiently integrate the phenomenon of attention into the main stream of machine vision and systems with restricted computing resources such as mobile robots can benefit from its advantages.
机译:视觉注意力是生物视觉中的重要现象之一,可以遵循以在人工视觉系统中实现更高的效率,智能和鲁棒性。本文研究了一种基于区域的方法,该方法在关注过程之前执行像素聚类,这与现代方法进行的后期聚类相反。本文提出了基于区域的注意力模型的特征图构建的基础步骤。基于颜色理论的扩展发现生成颜色对比图,使用基于扫描的新颖方法构造对称图,并提出了一种新的算法来计算尺寸对比图作为形式特征通道。使用获得的区域的矩来计算偏心率和方向,然后使用稀有度标准来评估显着性。所提出算法的有效设计允许合并五个特征通道,同时保持每秒多个帧的处理速率。与现有技术相比的另一个显着优势是,由于保留了它们的形状和精确的位置,因此它们可以在高级机器视觉程序中重用。结果表明,提出的模型具有将注意力现象有效地集成到机器视觉主流中的潜力,并且计算资源有限的系统(例如移动机器人)可以从其优势中受益。

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