Small target motion detection within complex natural environments is an extremely challenging task for autonomous robots. Surprisingly, the visual systems of insects have evolved to be highly efficient in detecting mates and tracking prey, even though targets occupy as small as a few degrees of their visual fields. The excellent sensitivity to small target motion relies on a class of specialized neurons called small target motion detectors (STMDs). However, existing STMD-based models are heavily dependent on visual contrast and perform poorly in complex natural environments where small targets generally exhibit extremely low contrast against neighbouring backgrounds. In this paper, we develop an attention and prediction guided visual system to overcome this limitation. The developed visual system comprises three main subsystems, namely, an attention module, an STMD-based neural network, and a prediction module. The attention module searches for potential small targets in the predicted areas of the input image and enhances their contrast against complex background. The STMD-based neural network receives the contrast-enhanced image and discriminates small moving targets from background false positives. The prediction module foresees future positions of the detected targets and generates a prediction map for the attention module. The three subsystems are connected in a recurrent architecture allowing information to be processed sequentially to activate specific areas for small target detection. Extensive experiments on synthetic and real-world datasets demonstrate the effectiveness and superiority of the proposed visual system for detecting small, low-contrast moving targets against complex natural environments.
翻译:令人惊讶的是,昆虫的视觉系统在探测伴侣和跟踪猎物方面已经发展得非常高效,即使目标占用了几度的视觉场域。对小目标运动的高度敏感性依赖于一组被称为小型目标运动探测器(STMDs)的专门神经元。然而,基于STMD的现有神经模型严重依赖于视觉对比,在复杂的自然环境中,小型目标与相邻背景相比一般极低,其性能表现不佳。在本文件中,我们开发了一个关注和预测引导视觉系统以克服这一限制。发达的视觉系统由三个主要子系统组成,即关注模块、基于STMD的神经网络和一个预测模块。关注模块在投入图像的预测领域寻找潜在的小目标,并增强它们与复杂背景的对比。基于STMD的神经网络接收了对比强度图像,并区分了与背景假阳性相对比的小移动目标。在本文中,我们预见了检测目标的未来位置,并为关注模块制作了一张预测地图。三个子系统是:关注模块模块,一个模块,一个关注模块,一个单元,一个基于STMMD的注意模块,与一个连续的常规检测系统,一个用于具体地球同步探测的常规数据结构。