Teshima Yu, Mogi Mayuko, Nishida Hare, Tsuchiya Takao, Kobayasi Kohta I, Hiryu Shizuko
Acoustic Navigation Research Center, Doshisha University, Kyoto 610-0321, Japan.
Project Team for System Development of Marine Environmental Impact Assessment / SIP Ocean Program, Japan Agency for Marine-Earth Science and Technology (JAMSTEC), Yokosuka 237-0061, Japan.
R Soc Open Sci. 2024 Jan 24;11(1):231415. doi: 10.1098/rsos.231415. eCollection 2024 Jan.
High-precision visual sensing has been achieved by combining cameras with deep learning. However, an unresolved challenge involves identifying information that remains elusive for optical sensors, such as occlusion spots hidden behind objects. Compared to light, sound waves have longer wavelengths and can, therefore, collect information on occlusion spots. In this study, we investigated whether bats could perform advanced sound sensing using echolocation to acquire a target's occlusion information. We conducted a two-alternative forced choice test on with five different targets, including targets with high visual similarity from the front, but different backend geometries, i.e. occlusion spots or textures. Subsequently, the echo impulse responses produced by these targets, which were difficult to obtain with real measurements, were computed using three-dimensional acoustic simulations to provide a detailed analysis consisting of the acoustic cues that the bats obtained through echolocation. Our findings demonstrated that bats could effectively discern differences in target occlusion spot structure and texture through echolocation. Furthermore, the discrimination performance was related to the differences in the logarithmic spectral distortion of the occlusion-related components in the simulated echo impulse responses. This suggested that the bats obtained occlusion information through echolocation, highlighting the advantages of utilizing broadband ultrasound for sensing.
通过将相机与深度学习相结合,已经实现了高精度视觉传感。然而,一个尚未解决的挑战是识别光学传感器难以捕捉的信息,比如隐藏在物体后面的遮挡点。与光相比,声波具有更长的波长,因此能够收集关于遮挡点的信息。在本研究中,我们调查了蝙蝠是否能够利用回声定位进行高级声音传感,以获取目标的遮挡信息。我们对五个不同的目标进行了二选一的强制选择测试,这些目标包括从正面看视觉相似度高,但后端几何形状不同的目标,即遮挡点或纹理。随后,利用三维声学模拟计算了这些目标产生的回声脉冲响应,这些响应很难通过实际测量获得,从而提供了一个详细的分析,包括蝙蝠通过回声定位获得的声学线索。我们的研究结果表明,蝙蝠能够通过回声定位有效地辨别目标遮挡点结构和纹理的差异。此外,辨别性能与模拟回声脉冲响应中与遮挡相关成分的对数谱失真差异有关。这表明蝙蝠通过回声定位获得了遮挡信息,突出了利用宽带超声进行传感的优势。