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Bandwidth Modeling of Silicon Retinas for Next Generation Visual Sensor Networks

机译:下一代视觉传感器网络的硅视网膜带宽建模

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摘要

Silicon retinas, also known as Dynamic Vision Sensors (DVS) or event-based visual sensors, have shown great advantages in terms of low power consumption, low bandwidth, wide dynamic range and very high temporal resolution. Owing to such advantages as compared to conventional vision sensors, DVS devices are gaining more and more attention in various applications such as drone surveillance, robotics, high-speed motion photography, etc. The output of such sensors is a sequence of events rather than a series of frames as for classical cameras. Estimating the data rate of the stream of events associated with such sensors is needed for the appropriate design of transmission systems involving such sensors. In this work, we propose to consider information about the scene content and sensor speed to support such estimation, and we identify suitable metrics to quantify the complexity of the scene for this purpose. According to the results of this study, the event rate shows an exponential relationship with the metric associated with the complexity of the scene and linear relationships with the speed of the sensor. Based on these results, we propose a two-parameter model for the dependency of the event rate on scene complexity and sensor speed. The model achieves a prediction accuracy of approximately 88.4% for the outdoor environment along with the overall prediction performance of approximately 84%.
机译:硅视网膜,也称为动态视觉传感器(DVS)或基于事件的视觉传感器,在低功耗,低带宽,宽动态范围和非常高的时间分辨率方面显示出巨大的优势。由于具有与传统视觉传感器相比的优势,DVS设备在无人机监视,机器人技术,高速运动摄影等各种应用中越来越受到关注。此类传感器的输出是一系列事件,而不是一系列事件。系列框架,与传统相机一样。对于涉及这种传感器的传输系统的适当设计,需要估计与这种传感器相关的事件流的数据速率。在这项工作中,我们建议考虑有关场景内容和传感器速度的信息以支持这种估计,并为此确定合适的度量标准来量化场景的复杂性。根据这项研究的结果,事件发生率显示出与场景复杂性相关的指标呈指数关系,以及与传感器速度相关的线性关系。基于这些结果,我们针对事件速率对场景复杂度和传感器速度的依赖性提出了一个两参数模型。该模型对室外环境的预测精度约为88.4%,而总体预测性能约为84%。

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