Takatsuka Susumu, Miyamoto Norio, Sato Hidehito, Morino Yoshiaki, Kurita Yoshihisa, Yabuki Akinori, Chen Chong, Kawagucci Shinsuke
Sony Group Corporation Minato-ku Japan.
Super-Cutting-Edge Grand and Advanced Research (SUGAR) Program, Institute for Extra-Cutting-Edge Science and Technology Avant-Garde Research (X-STAR) Japan Agency for Marine-Earth Science and Technology (JAMSTEC) Yokosuka Kanagawa Japan.
Ecol Evol. 2024 Aug 27;14(8):e70150. doi: 10.1002/ece3.70150. eCollection 2024 Aug.
The Event-based Vision Sensor (EVS) is a bio-inspired sensor that captures detailed motions of objects, aiming to become the 'eyes' of machines like self-driving cars. Compared to conventional frame-based image sensors, the EVS has an extremely fast motion capture equivalent to 10,000-fps even with standard optical settings, plus high dynamic ranges for brightness and also lower consumption of memory and energy. Here, we developed 22 characteristic features for analysing the motions of aquatic particles from the EVS raw data and tested the applicability of the EVS in analysing plankton behaviour. Laboratory cultures of six species of zooplankton and phytoplankton were observed, confirming species-specific motion periodicities up to 41 Hz. We applied machine learning to automatically classify particles into four categories of zooplankton and passive particles, achieving an accuracy up to 86%. At the in situ deployment of the EVS at the bottom of Lake Biwa, several particles exhibiting distinct cumulative trajectory with periodicities in their motion (up to 16 Hz) were identified, suggesting that they were living organisms with rhythmic behaviour. We also used the EVS in the deep sea, observing particles with active motion and periodicities over 40 Hz. Our application of the EVS, especially focusing on its millisecond-scale temporal resolution and wide dynamic range, provides a new avenue to investigate organismal behaviour characterised by rapid and periodical motions. The EVS will likely be applicable in the near future for the automated monitoring of plankton behaviour by edge computing on autonomous floats, as well as quantifying rapid cellular-level activities under microscopy.
基于事件的视觉传感器(EVS)是一种受生物启发的传感器,可捕捉物体的详细运动,旨在成为自动驾驶汽车等机器的“眼睛”。与传统的基于帧的图像传感器相比,即使在标准光学设置下,EVS也具有极快的运动捕捉能力,相当于10000帧/秒,此外还具有高亮度动态范围以及更低的内存和能量消耗。在此,我们从EVS原始数据中开发了22个特征来分析水生颗粒的运动,并测试了EVS在分析浮游生物行为方面的适用性。我们观察了六种浮游动物和浮游植物的实验室培养物,确认了高达41Hz的物种特异性运动周期。我们应用机器学习将颗粒自动分类为浮游动物和被动颗粒的四类,准确率高达86%。在琵琶湖底部原位部署EVS时,识别出了几个具有明显累积轨迹且运动具有周期性(高达16Hz)的颗粒,这表明它们是具有节律行为的生物。我们还在深海中使用了EVS,观察到了具有活跃运动和超过40Hz周期性的颗粒。我们对EVS的应用,特别是关注其毫秒级的时间分辨率和宽动态范围,为研究以快速和周期性运动为特征的生物行为提供了一条新途径。EVS在不久的将来可能适用于通过自主浮标上的边缘计算自动监测浮游生物行为,以及在显微镜下量化快速的细胞水平活动。