论文标题
时间延迟反馈神经网络,用于区分复杂动态环境中的小型,快速移动的目标
A Time-Delay Feedback Neural Network for Discriminating Small, Fast-Moving Targets in Complex Dynamic Environments
论文作者
论文摘要
在复杂的视觉环境中区分小型移动对象是通常限制计算能力的自主微机器人的重大挑战。通过利用其高度进化的视觉系统,飞行昆虫可以有效地检测伴侣并在快速追捕过程中追踪猎物,即使小目标等同于其视野中的几个像素。对小目标运动的高度敏感性得到了一类称为小靶运动探测器(STMD)的专业神经元的支持。现有的基于STMD的计算模型通常包含四个通过前馈环相互连接的顺序布置的神经层,以从原始视觉输入中提取有关小目标运动的信息。但是,反馈是运动感知的另一个重要调节回路,尚未在STMD途径中研究,其小型目标运动检测的功能作用尚不清楚。在本文中,我们提出了一个具有反馈连接(反馈STMD)的基于STMD的神经网络,该网络输出将暂时延迟,然后回到下层以介导神经反应。我们将模型的属性与有时的反馈循环进行比较,并发现它显示出对高速对象的偏爱。广泛的实验表明,反馈STMD可以实现快速移动小目标的出色检测性能,同时显着抑制了背景假阳性运动,显示出较低的速度。提出的反馈模型为机器人视觉系统提供了有效的解决方案,用于检测始终是显着且可能威胁的快速移动小目标。
Discriminating small moving objects within complex visual environments is a significant challenge for autonomous micro robots that are generally limited in computational power. By exploiting their highly evolved visual systems, flying insects can effectively detect mates and track prey during rapid pursuits, even though the small targets equate to only a few pixels in their visual field. The high degree of sensitivity to small target movement is supported by a class of specialized neurons called small target motion detectors (STMDs). Existing STMD-based computational models normally comprise four sequentially arranged neural layers interconnected via feedforward loops to extract information on small target motion from raw visual inputs. However, feedback, another important regulatory circuit for motion perception, has not been investigated in the STMD pathway and its functional roles for small target motion detection are not clear. In this paper, we propose an STMD-based neural network with feedback connection (Feedback STMD), where the network output is temporally delayed, then fed back to the lower layers to mediate neural responses. We compare the properties of the model with and without the time-delay feedback loop, and find it shows preference for high-velocity objects. Extensive experiments suggest that the Feedback STMD achieves superior detection performance for fast-moving small targets, while significantly suppressing background false positive movements which display lower velocities. The proposed feedback model provides an effective solution in robotic visual systems for detecting fast-moving small targets that are always salient and potentially threatening.