进化的传感器环境与视觉注意:一个实验探索

A. Crétu
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引用次数: 0

摘要

目前,研究界正在经历传感器数据量的显著增长,这些数据可用于几种实际应用,特别是那些处理视觉信息的数据。大型数据集的可用性对仅选择相关特征以允许其及时使用和解释提出了关键挑战。近年来,人们对受人类生物视觉启发的算法越来越感兴趣,将其作为处理大型数据集的计算资源开发的另一种思想来源。特别是,视觉注意力的计算模型已经被证明可以通过只关注感兴趣的区域并在需要的地方分配资源来显着提高场景理解和物体识别的速度。本文探讨了视觉注意机制在两种不同场景下的使用和衡量性能,以识别最佳特征集,确保图像中物体的识别和分类。第一个场景解决了在一个相对已知背景的受控环境中从多个视点识别不同类别车辆的问题。另一个场景探讨了改进的视觉注意模型在卫星图像中识别建筑物的能力,其特点是内容和特征变化很大,背景杂乱。
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Evolving sensor environments with visual attention: An experimental exploration
The research community is experiencing nowadays a significant growth in the amount of sensor data made available to several practical applications, particularly those dealing with visual information. The availability of large datasets poses critical challenges for the selection of only relevant features to allow their timely use and interpretation. The recent years marked an increasing interest in algorithms inspired from biological human vision as an alternative source of ideas for the development of computational resources to deal with large datasets. In particular, computational models of visual attention have been shown to significantly improve the speed of scene understanding and object recognition by attending only the regions of interest and distributing the resources where they are required. This paper explores the use and gauges the performance of visual attention mechanisms for identifying an optimal feature set that ensures the identification and classification of objects in images, in two different scenarios. The first scenario addresses the issue of the identification of different categories of vehicles from multiple viewpoints in a controlled environment, with a relatively known background. The other scenario explores the capabilities of an improved visual attention model for the identification of buildings in satellite imaging, characterized by large variations in content and characteristics and by a cluttered background.
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