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A Model for the Detection of Moving Targets in Visual Clutter Inspired by Insect Physiology

机译:昆虫生理学启发的视觉杂波中运动目标的检测模型

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摘要

We present a computational model for target discrimination based on intracellular recordings from neurons in the fly visual system. Determining how insects detect and track small moving features, often against cluttered moving backgrounds, is an intriguing challenge, both from a physiological and a computational perspective. Previous research has characterized higher-order neurons within the fly brain, known as ‘small target motion detectors’ (STMD), that respond robustly to moving features, even when the velocity of the target is matched to the background (i.e. with no relative motion cues). We recorded from intermediate-order neurons in the fly visual system that are well suited as a component along the target detection pathway. This full-wave rectifying, transient cell (RTC) reveals independent adaptation to luminance changes of opposite signs (suggesting separate ON and OFF channels) and fast adaptive temporal mechanisms, similar to other cell types previously described. From this physiological data we have created a numerical model for target discrimination. This model includes nonlinear filtering based on the fly optics, the photoreceptors, the 1st order interneurons (Large Monopolar Cells), and the newly derived parameters for the RTC. We show that our RTC-based target detection model is well matched to properties described for the STMDs, such as contrast sensitivity, height tuning and velocity tuning. The model output shows that the spatiotemporal profile of small targets is sufficiently rare within natural scene imagery to allow our highly nonlinear ‘matched filter’ to successfully detect most targets from the background. Importantly, this model can explain this type of feature discrimination without the need for relative motion cues.
机译:我们提出了基于飞行视觉系统中神经元的细胞内记录的目标识别的计算模型。从生理学和计算的角度来看,确定昆虫通常如何在混乱的运动背景下如何检测和跟踪微小的运动特征都是一个有趣的挑战。先前的研究已经对飞大脑中的高阶神经元进行了表征,这些神经元被称为“小目标运动检测器”(STMD),即使目标的速度与背景匹配(即没有相对运动),也可以对运动特征做出强有力的响应提示)。我们从飞行视觉系统中的中间阶神经元记录下来,这些神经元非常适合作为沿着目标检测路径的组成部分。该全波整流瞬态单元(RTC)揭示了对相反符号的亮度变化的独立适应(建议使用单独的ON和OFF通道)和快速自适应的时间机制,类似于先前描述的其他单元类型。根据这些生理数据,我们创建了用于目标识别的数值模型。该模型包括基于飞行光学器件,感光器,一阶中间神经元(大型单极电池)和RTC的新导出参数的非线性滤波。我们表明,基于RTC的目标检测模型与针对STMD所述的属性非常匹配,例如对比度灵敏度,高度调整和速度调整。模型输出表明,小目标的时空分布在自然场景图像中非常罕见,可以使我们高度非线性的“匹配滤波器”成功从背景中检测到大多数目标。重要的是,该模型可以解释这种类型的特征识别,而无需相对运动提示。

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