Real-Time Temporal Frequency Detection in FPGA Using Event-Based Vision Sensor

Sahar Hoseini, B. Linares-Barranco
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引用次数: 6

Abstract

A dynamic vision sensor (DVS) is a new type of vision sensor in which each pixel acts as a motion sensor and generates highly time-accurate events when it detects movement in the scene. The high temporal precision of these types of vision sensors allows the extraction of different low-level temporal features, which is not possible when using a frame-based camera. Hierarchical vision-processing systems use low-level features to recognize a higher level of abstraction. One of the lowlevel features that can be extracted with DVS is the temporal frequency. This feature can be used along with other visual features for more accurate object recognition when the object has rotating parts, such as a quadcopter. This work is an extension of our previous work, wherein we proposed an algorithm to extract this temporal low-level feature by using a DVS. In this work, we proposed a digital circuit with a small footprint to extract the frequency of rotating objects in real time with very low latency. We have synthesized the digital circuit in Spartan-6 field-programmable gate array (FPGA) and also in UMC 180-nm technology to measure the performance, power consumption, and occupied area. MATLAB and Verilog codes for this work are available for academic purposes upon request.
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基于事件视觉传感器的FPGA实时时间频率检测
动态视觉传感器(DVS)是一种新型的视觉传感器,其中每个像素都充当运动传感器,当它检测到场景中的运动时产生高度精确的时间事件。这些类型的视觉传感器的高时间精度允许提取不同的低级时间特征,这在使用基于帧的相机时是不可能的。分层视觉处理系统使用低级特征来识别更高层次的抽象。可以用分布式交换机提取的底层特征之一是时间频率。当物体具有旋转部件(如四轴飞行器)时,该特征可以与其他视觉特征一起使用,以实现更准确的物体识别。这项工作是我们之前工作的扩展,在之前的工作中,我们提出了一种算法,通过使用DVS提取这种时间底层特征。在这项工作中,我们提出了一个占地面积小的数字电路,以非常低的延迟实时提取旋转物体的频率。我们在Spartan-6现场可编程门阵列(FPGA)和UMC 180纳米技术上合成了数字电路,以测量其性能、功耗和占用面积。本工作的MATLAB和Verilog代码可根据要求提供学术用途。
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