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A computer vision system for rapid search inspired by surface-based attention mechanisms from human perception

机译:计算机视觉系统,用于快速搜索,其灵感来自于基于人类感知的基于表面的注意力机制

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摘要

Humans are highly efficient at visual search tasks by focusing selective attention on a small but relevant region of a visual scene. Recent results from biological vision suggest that surfaces of distinct physical objects form the basic units of this attentional process. The aim of this paper is to demonstrate how such surface-based attention mechanisms can speed up a computer vision system for visual search. The system uses fast perceptual grouping of depth cues to represent the visual world at the level of surfaces. This representation is stored in short-term memory and updated over time. A top-down guided attention mechanism sequentially selects one of the surfaces for detailed inspection by a recognition module. We show that the proposed attention framework requires little computational overhead (about 11 ms), but enables the system to operate in real-time and leads to a substantial increase in search efficiency. (C) 2014 Elsevier Ltd. All rights reserved.
机译:通过将选择性注意力集中在视觉场景的一个较小但相关的区域上,人类在视觉搜索任务中非常高效。生物视觉的最新结果表明,不同物理对象的表面形成了此注意力过程的基本单元。本文的目的是演示这种基于表面的注意机制如何加快视觉搜索的计算机视觉系统。该系统使用深度提示的快速感知分组来表示表面级别的视觉世界。此表示形式存储在短期内存中,并随时间更新。自上而下的引导注意机制依次选择一个表面以供识别模块进行详细检查。我们表明,提出的注意力框架只需要很少的计算开销(大约11毫秒),但可以使系统实时运行并导致搜索效率的大幅提高。 (C)2014 Elsevier Ltd.保留所有权利。

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