School of Informatics, The University of Edinburgh, Edinburgh, United Kingdom.
Faculty of Mathematics and Computer Science, University of Münster, Münster, Germany.
PLoS Comput Biol. 2019 Jul 18;15(7):e1007123. doi: 10.1371/journal.pcbi.1007123. eCollection 2019 Jul.
Many insects navigate by integrating the distances and directions travelled on an outward path, allowing direct return to the starting point. Fundamental to the reliability of this process is the use of a neural compass based on external celestial cues. Here we examine how such compass information could be reliably computed by the insect brain, given realistic constraints on the sky polarisation pattern and the insect eye sensor array. By processing the degree of polarisation in different directions for different parts of the sky, our model can directly estimate the solar azimuth and also infer the confidence of the estimate. We introduce a method to correct for tilting of the sensor array, as might be caused by travel over uneven terrain. We also show that the confidence can be used to approximate the change in sun position over time, allowing the compass to remain fixed with respect to 'true north' during long excursions. We demonstrate that the compass is robust to disturbances and can be effectively used as input to an existing neural model of insect path integration. We discuss the plausibility of our model to be mapped to known neural circuits, and to be implemented for robot navigation.
许多昆虫通过整合在外出路径上所经过的距离和方向来导航,从而可以直接返回起点。该过程的可靠性的基础是使用基于外部天体线索的神经罗盘。在这里,我们研究了给定天空极化模式和昆虫眼睛传感器阵列的实际限制,昆虫大脑如何可靠地计算这种罗盘信息。通过处理天空不同部分不同方向的偏振度,我们的模型可以直接估计太阳方位角,并且还可以推断出估计的置信度。我们引入了一种校正传感器阵列倾斜的方法,这种倾斜可能是由于在不平坦的地形上行驶引起的。我们还表明,置信度可以用于近似太阳位置随时间的变化,从而使罗盘在长时间的行进中相对于“正北”保持固定。我们证明了该罗盘具有很强的抗干扰能力,可以有效地用作昆虫路径整合的现有神经模型的输入。我们讨论了我们的模型映射到已知神经回路的可能性,以及将其用于机器人导航的可能性。