Spatial Visual Attention for Novelty Detection: A Space-based Saliency Model in 3D Using Spatial Memory

Q1 Computer Science
Nevrez Imamoglu, E. Dorronzoro, M. Sekine, K. Kita, Wenwei Yu
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引用次数: 3

Abstract

Saliency maps as visual attention computational models can reveal novel regions within a scene (as in the human visual system), which can decrease the amount of data to be processed in task specific computer vision applications. Most of the saliency computation models do not take advantage of prior spatial memory by giving priority to spatial or object based features to obtain bottom-up or top-down saliency maps. In our previous experiments, we demonstrated that spatial memory regardless of object features can aid detection and tracking tasks with a mobile robot by using a 2D global environment memory of the robot and local Kinect data in 2D to compute the space-based saliency map. However, in complex scenes where 2D space-based saliency is not enough (i.e., subject lying on the bed), 3D scene analysis is necessary to extract novelty within the scene by using spatial memory. Therefore, in this work, to improve the detection of novelty in a known environment, we proposed a space-based spatial saliency with 3D local information by improving 2D space base saliency with height as prior information about the specific locations. Moreover, the algorithm can also be integrated with other bottom-up or top-down saliency computational models to improve the detection results. Experimental results demonstrate that high accuracy for novelty detection can be obtained, and computational time can be reduced for existing state of the art detection and tracking models with the proposed algorithm.
新颖性检测的空间视觉注意:基于空间记忆的三维空间显著性模型
作为视觉注意力计算模型的显著性图可以揭示场景中的新区域(就像在人类视觉系统中一样),这可以减少在特定任务的计算机视觉应用程序中需要处理的数据量。大多数显著性计算模型没有利用先验空间记忆,优先考虑空间或基于对象的特征来获得自底向上或自顶向下的显著性图。在我们之前的实验中,我们通过使用机器人的2D全局环境记忆和2D本地Kinect数据来计算基于空间的显著性地图,证明了空间记忆可以帮助移动机器人检测和跟踪任务,而不考虑物体特征。然而,在2D空间显著性不够的复杂场景中(例如,受试者躺在床上),需要进行3D场景分析,利用空间记忆提取场景内的新颖性。因此,在这项工作中,为了提高在已知环境下的新颖性检测,我们通过改进以高度作为特定位置先验信息的二维空间基础显著性,提出了基于三维局部信息的空间显著性。此外,该算法还可以与其他自底向上或自顶向下的显著性计算模型相结合,以提高检测结果。实验结果表明,该算法可以获得较高的新颖性检测精度,并且可以减少现有检测和跟踪模型的计算时间。
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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来源期刊
IPSJ Transactions on Computer Vision and Applications
IPSJ Transactions on Computer Vision and Applications Computer Science-Computer Vision and Pattern Recognition
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