Möller Ralf, Vardy Andrew
Computer Engineering, Faculty of Technology, Bielefeld University, 33594 Bielefeld, Germany.
Biol Cybern. 2006 Nov;95(5):413-30. doi: 10.1007/s00422-006-0095-3. Epub 2006 Sep 26.
In natural images, the distance measure between two images taken at different locations rises smoothly with increasing distance between the locations. This fact can be exploited for local visual homing where the task is to reach a goal location that is characterized by a snapshot image: descending in the image distance will lead the agent to the goal location. To compute an estimate of the spatial gradient in the distance measure, its value must be sampled at three noncollinear points. An animal or robot would have to insert exploratory movements into its home trajectory to collect these samples. Here we suggest a method based on the matched-filter concept that allows one to estimate the gradient without exploratory movements. Two matched filters--optical flow fields resulting from translatory movements in the horizontal plane--are used to predict two images in perpendicular directions from the current location. We investigate the relation to differential flow methods applied to the local homing problem and show that the matched-filter approach produces reliable homing behavior on image databases. Two alternative methods that only require a single matched filter are suggested. The matched-filter concept is also applied to derive a home-vector equation for a Fourier-based parameter method.
在自然图像中,在不同位置拍摄的两幅图像之间的距离度量会随着位置之间距离的增加而平滑上升。这一事实可用于局部视觉归巢,其任务是到达以快照图像为特征的目标位置:图像距离下降会引导智能体到达目标位置。为了计算距离度量中的空间梯度估计值,必须在三个非共线点对其值进行采样。动物或机器人必须在其归巢轨迹中插入探索性动作来收集这些样本。在此,我们提出一种基于匹配滤波器概念的方法,该方法允许在无需探索性动作的情况下估计梯度。两个匹配滤波器——由水平面平移运动产生的光流场——用于从当前位置预测垂直方向上的两幅图像。我们研究了与应用于局部归巢问题的差分流方法的关系,并表明匹配滤波器方法在图像数据库上产生可靠的归巢行为。还提出了另外两种仅需要单个匹配滤波器的方法。匹配滤波器概念还被应用于推导基于傅里叶的参数方法的归巢向量方程。