Brain-enhanced synergistic attention (BESA)

D. Khosla, Matthew S. Keegan, Lei Zhang, K. Martin, Darrel J. VanBuer, David J. Huber
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引用次数: 1

Abstract

In this paper, we describe a hybrid human-machine system for searching and detecting Objects of Interest (OI) in imagery. Automated methods for OI detection based on models of human visual attention have received much interest, but are inherently bottom-up and driven by features. Humans fixate on regions of imagery based on a much stronger top-down component. While it may be possible to include some aspects of top-down cognition into these methods, it is difficult to fully capture all aspects of human cognition into an automated algorithm. Our hypothesis is that combination of automated methods with human fixations will provide a better solution than either alone. In this work, we describe a Brain-Enhanced Synergistic Attention (BESA) system that combines models of visual attention with real-time eye fixations from a human for accurate search and detections of OI. We describe two different BESA schemes and provide implementation details. Preliminary studies were conducted to determine the efficacy of the system and initial results are promising. Typical applications of this technology are in surveillance, reconnaissance and intelligence analysis.
脑增强协同注意(BESA)
本文描述了一种用于图像中感兴趣对象(OI)搜索和检测的混合人机系统。基于人类视觉注意模型的OI检测自动化方法受到了广泛关注,但这些方法本质上是自下而上的,并且由特征驱动。人类对图像区域的关注基于一种更强的自上而下的成分。虽然有可能将自上而下的认知的某些方面纳入这些方法,但很难将人类认知的所有方面完全捕获到自动化算法中。我们的假设是,自动化方法与人类注视的结合将提供比单独使用更好的解决方案。在这项工作中,我们描述了一个脑增强的协同注意(BESA)系统,该系统将视觉注意模型与人类的实时眼睛注视相结合,用于准确搜索和检测成骨不全症。我们描述了两种不同的BESA方案,并提供了实现细节。初步研究确定了该系统的功效,初步结果是有希望的。该技术的典型应用是监视、侦察和情报分析。
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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