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Obstacle detection by recognizing binary expansion patterns

机译:通过识别二进制扩展模式进行障碍物检测

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A technique is described for obstacle detection, based on the expansion of the image-plane projection of a textured object, as its distance from the sensor decreases. Information is conveyed by vectors whose components represent first-order temporal and spatial derivatives of the image intensity, which are related to the time to collision through the local divergence. Such vectors may be characterized as patterns corresponding to "safe" or "dangerous" situations. We show that the essential information is conveyed by single-bit vector components, representing the signs of the relevant derivatives. We use two recently developed, high capacity classifiers, employing neural learning techniques, to recognize the imminence of collision from such patterns.
机译:描述了一种用于障碍物检测的技术,该技术基于纹理物体的图像平面投影的扩展,因为它与传感器的距离减小了。信息是通过向量传递的,向量的成分代表图像强度的一阶时间和空间导数,这些导数与通过局部发散发生碰撞的时间有关。这样的向量可以被表征为对应于“安全”或“危险”情况的模式。我们表明基本信息是由单个位向量分量传达的,代表相关导数的符号。我们使用神经学习技术使用两个最近开发的高容量分类器,以从这种模式中识别碰撞的迫切性。

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