Department of Computer Architectures and Automatic Control, Complutense University of Madrid, 28040 Madrid, Spain.
Sensors (Basel). 2011;11(8):8164-79. doi: 10.3390/s110808164. Epub 2011 Aug 22.
Motion estimation is a low-level vision task that is especially relevant due to its wide range of applications in the real world. Many of the best motion estimation algorithms include some of the features that are found in mammalians, which would demand huge computational resources and therefore are not usually available in real-time. In this paper we present a novel bioinspired sensor based on the synergy between optical flow and orthogonal variant moments. The bioinspired sensor has been designed for Very Large Scale Integration (VLSI) using properties of the mammalian cortical motion pathway. This sensor combines low-level primitives (optical flow and image moments) in order to produce a mid-level vision abstraction layer. The results are described trough experiments showing the validity of the proposed system and an analysis of the computational resources and performance of the applied algorithms.
运动估计是一种低级视觉任务,由于其在现实世界中的广泛应用而尤为重要。许多最好的运动估计算法都包含了一些在哺乳动物中发现的特征,这需要巨大的计算资源,因此通常无法实时实现。在本文中,我们提出了一种基于光流和正交变体矩协同作用的新型仿生传感器。该仿生传感器是根据哺乳动物皮质运动通路的特性,利用 Very Large Scale Integration(VLSI)设计的。该传感器结合了低级原语(光流和图像矩),以生成中层视觉抽象层。通过实验描述了结果,展示了所提出系统的有效性,并对应用算法的计算资源和性能进行了分析。