论文标题
Flivver:飞叶启发的视觉速度估计和范围
FLIVVER: Fly Lobula Inspired Visual Velocity Estimation & Ranging
论文作者
论文摘要
微小的昆虫或昆虫大小的机器人可以估计其绝对速度和与附近物体的距离的机制尚不清楚。但是,这种能力对于需要在飞行过程中估算风向的行为至关重要,例如气味 - 倾斜跟踪。神经科学和对昆虫的行为研究表明,它们依赖于对图像运动或视频流的感知来估计相对运动,相当于其速度和与世界上物体的距离之比。因此,关键的开放挑战是将这两个状态从其比率的单个测量中解脱出来。尽管现代大满贯(同时定位和映射)方法为机器人系统提供了解决方案,但这些方法通常依赖于昆虫可能无法执行的计算,例如同时跟踪多个单独的视觉特征,记住世界的3D图像,并使用迭代算法解决非线性优化问题。在这里,我们提出了一种新颖的算法,即Flivver,该算法将动态前进运动的几何形状与从昆虫视觉处理到\ textIt {直接{直接}估计的绝对地面速度的灵感从视觉流和加速度信息的组合估算。我们的算法为昆虫如何估计绝对速度提供了一个明确的假设,还为设计快速模拟电路设计以进行有效状态估计,并提供了一个理论框架,可以将其应用于昆虫大小的机器人。
The mechanism by which a tiny insect or insect-sized robot could estimate its absolute velocity and distance to nearby objects remains unknown. However, this ability is critical for behaviors that require estimating wind direction during flight, such as odor-plume tracking. Neuroscience and behavior studies with insects have shown that they rely on the perception of image motion, or optic flow, to estimate relative motion, equivalent to a ratio of their velocity and distance to objects in the world. The key open challenge is therefore to decouple these two states from a single measurement of their ratio. Although modern SLAM (Simultaneous Localization and Mapping) methods provide a solution to this problem for robotic systems, these methods typically rely on computations that insects likely cannot perform, such as simultaneously tracking multiple individual visual features, remembering a 3D map of the world, and solving nonlinear optimization problems using iterative algorithms. Here we present a novel algorithm, FLIVVER, which combines the geometry of dynamic forward motion with inspiration from insect visual processing to \textit{directly} estimate absolute ground velocity from a combination of optic flow and acceleration information. Our algorithm provides a clear hypothesis for how insects might estimate absolute velocity, and also provides a theoretical framework for designing fast analog circuitry for efficient state estimation, which could be applied to insect-sized robots.