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Efficient artifacts filter by density-based clustering in long term 3D whale passive acoustic monitoring with five hydrophones fixed under an Autonomous Surface Vehicle

机译:通过基于密度的聚集在长期3D鲸鱼被动声学监测中有效的伪影滤波器,用五个水机械在自主表面车辆下固定

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Passive underwater acoustics allows for the monitoring of the echolocation clicks of cetaceans. Static hydrophone arrays monitor from a fixed location, however, they cannot track animals over long distances. More flexibility can be achieved by mounting hydrophones on a mobile structure. In this paper, we present the design of a small non-uniform array of five hydrophones mounted directly under the Autonomous Surface Vehicle (ASV) Sphyrna (also called an Autonomous Laboratory Vehicle) built by SeaProven in France. This configuration is made challenging by the 40cm aperture of the hydrophone array, extending only two meters below the surface and above the thermocline, thus presenting various artifacts. The array, fixed under the keel of the drone, is numerically stabilized in yaw and roll using the drone's Motion Processing Unit (MPU). To increase the accuracy of the 3D tracking computed from a four hour recording of a Sperm Whale diving several kilometers away, we propose an efficient joint filtering of the clicks in the Time Delay of Arrival (TDoA) space. We show how the DBSCAN algorithm efficiently removes any outlier detection among the thousands of transients, and yields to coherent high definition 3D tracks.
机译:被动水声允许鲸类回声定位的点击监控。静态听音阵列从一个固定的位置进行监控,但是,它们不能长距离追踪动物。更多的灵活性可以通过在一个移动结构上安装水听器来实现。在本文中,我们提出了直接安装由SeaProven在法国内置自治地面车辆(ASV)Sphyrna(也称为自主实验室车辆)下一个小的非均匀阵列五水听器的设计。这种配置是由通过水听器阵列的40厘米孔径挑战,延伸表面以下和以上跃层仅两米,由此呈现各种伪像。的阵列,无人驾驶飞机的龙骨下固定,进行数值在偏航和横滚使用无人驾驶飞机的运动处理单元(MPU)稳定化。为了提高3D追踪从抹香鲸跳水的四个小时的录制几公里外的计算精度,我们建议在到达(TDOA)的空间时间延迟点击一个有效的联合滤波。我们呈现怎样的DBSCAN算法有效去除数千瞬变中的任何异常检测,并产生相干高清晰度的3D轨迹。

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