Fischell Erin M, Schmidt Henrik
Department of Mechanical Engineering, Massachusetts Institute of Technology, Cambridge, Massachusetts 02139, USA.
J Acoust Soc Am. 2015 Dec;138(6):3773-84. doi: 10.1121/1.4938017.
One of the long term goals of autonomous underwater vehicle (AUV) minehunting is to have multiple inexpensive AUVs in a harbor autonomously classify hazards. Existing acoustic methods for target classification using AUV-based sensing, such as sidescan and synthetic aperture sonar, require an expensive payload on each outfitted vehicle and post-processing and/or image interpretation. A vehicle payload and machine learning classification methodology using bistatic angle dependence of target scattering amplitudes between a fixed acoustic source and target has been developed for onboard, fully autonomous classification with lower cost-per-vehicle. To achieve the high-quality, densely sampled three-dimensional (3D) bistatic scattering data required by this research, vehicle sampling behaviors and an acoustic payload for precision timed data acquisition with a 16 element nose array were demonstrated. 3D bistatic scattered field data were collected by an AUV around spherical and cylindrical targets insonified by a 7-9 kHz fixed source. The collected data were compared to simulated scattering models. Classification and confidence estimation were shown for the sphere versus cylinder case on the resulting real and simulated bistatic amplitude data. The final models were used for classification of simulated targets in real time in the LAMSS MOOS-IvP simulation package [M. Benjamin, H. Schmidt, P. Newman, and J. Leonard, J. Field Rob. 27, 834-875 (2010)].
自主水下航行器(AUV)猎雷的一个长期目标是在港口部署多个低成本AUV,使其能够自主对危险物进行分类。现有的基于AUV传感的目标分类声学方法,如侧扫声纳和合成孔径声纳,需要为每艘配备的航行器安装昂贵的传感器,并且需要进行后处理和/或图像解读。一种利用固定声源与目标之间目标散射幅度的双基地角度依赖性的航行器传感器载荷及机器学习分类方法已经被开发出来,用于实现每艘航行器成本更低的机载完全自主分类。为了获取本研究所需的高质量、密集采样的三维(3D)双基地散射数据,展示了航行器的采样行为以及一种用于通过16元鼻端阵列进行精确定时数据采集的声学传感器载荷。一个AUV围绕由7 - 9kHz固定声源照射的球形和圆柱形目标收集了3D双基地散射场数据。将收集到的数据与模拟散射模型进行了比较。针对球体与圆柱体的情况,在所得的真实和模拟双基地幅度数据上展示了分类及置信度估计。最终模型被用于在LAMSS MOOS - IvP仿真软件包[M. 本杰明、H. 施密特、P. 纽曼和J. 伦纳德,《现场机器人学杂志》27,834 - 875(2010年)]中对模拟目标进行实时分类。