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基于事件的传感器的数据更少但信息相同:一种仿生滤波和数据减少算法。

Less Data Same Information for Event-Based Sensors: A Bioinspired Filtering and Data Reduction Algorithm.

机构信息

Group for Digital Design and Processing, Department of Electronic Engineering, School of Engineering, Universitat de Valencia, Burjassot, 46100 Valencia, Spain.

出版信息

Sensors (Basel). 2018 Nov 24;18(12):4122. doi: 10.3390/s18124122.

Abstract

Sensors provide data which need to be processed after acquisition to remove noise and extract relevant information. When the sensor is a network node and acquired data are to be transmitted to other nodes (e.g., through Ethernet), the amount of generated data from multiple nodes can overload the communication channel. The reduction of generated data implies the possibility of lower hardware requirements and less power consumption for the hardware devices. This work proposes a filtering algorithm (LDSI-Less Data Same Information) which reduces the generated data from event-based sensors without loss of relevant information. It is a bioinspired filter, i.e., event data are processed using a structure resembling biological neuronal information processing. The filter is fully configurable, from a "transparent mode" to a very restrictive mode. Based on an analysis of configuration parameters, three main configurations are given: weak, medium and restrictive. Using data from a DVS event camera, results for a similarity detection algorithm show that event data can be reduced up to 30% while maintaining the same similarity index when compared to unfiltered data. Data reduction can reach 85% with a penalty of 15% in similarity index compared to the original data. An object tracking algorithm was also used to compare results of the proposed filter with other existing filter. The LDSI filter provides less error ( 4 . 86 ± 1 . 87 ) when compared to the background activity filter ( 5 . 01 ± 1 . 93 ). The algorithm was tested under a PC using pre-recorded datasets, and its FPGA implementation was also carried out. A Xilinx Virtex6 FPGA received data from a 128 × 128 DVS camera, applied the LDSI algorithm, created a AER dataflow and sent the data to the PC for data analysis and visualization. The FPGA could run at 177 MHz clock speed with a low resource usage (671 LUT and 40 Block RAM for the whole system), showing real time operation capabilities and very low resource usage. The results show that, using an adequate filter parameter tuning, the relevant information from the scene is kept while fewer events are generated (i.e., fewer generated data).

摘要

传感器提供的数据在采集后需要进行处理,以去除噪声并提取相关信息。当传感器是网络节点并且采集的数据要传输到其他节点(例如,通过以太网)时,来自多个节点的生成数据量可能会使通信信道过载。生成数据的减少意味着硬件设备可能需要更低的硬件要求和更少的功耗。这项工作提出了一种过滤算法(LDSI-Less Data Same Information),它可以减少基于事件的传感器生成的数据,而不会丢失相关信息。它是一种仿生滤波器,即使用类似于生物神经元信息处理的结构来处理事件数据。该滤波器是完全可配置的,从“透明模式”到非常严格的模式。基于对配置参数的分析,给出了三种主要的配置:弱、中、强。使用来自 DVS 事件相机的数据,对相似性检测算法的结果进行了分析,结果表明,与未过滤数据相比,事件数据可以减少 30%,同时保持相同的相似性指数。与原始数据相比,数据减少 85%,相似性指数降低 15%。还使用了一个目标跟踪算法来比较所提出的滤波器与其他现有滤波器的结果。与背景活动滤波器(5.01 ± 1.93)相比,LDSI 滤波器提供的误差更小(4.86 ± 1.87)。该算法在使用预记录数据集的 PC 上进行了测试,并且还进行了其 FPGA 实现。Xilinx Virtex6 FPGA 从 128×128 DVS 相机接收数据,应用 LDSI 算法,创建 AER 数据流,并将数据发送到 PC 进行数据分析和可视化。该 FPGA 可以以 177 MHz 的时钟速度运行,资源使用率低(整个系统使用 671 个 LUT 和 40 个块 RAM),显示出实时操作能力和极低的资源使用率。结果表明,使用适当的滤波器参数调整,可以在生成较少事件(即生成较少数据)的情况下保留场景的相关信息。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/5ad5/6308842/134fdd32f21b/sensors-18-04122-g001.jpg

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