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首页> 外文期刊>Pattern Recognition: The Journal of the Pattern Recognition Society >RECOVERING THE 3D STRUCTURE OF TUBULAR OBJECTS FROM STEREO SILHOUETTES
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RECOVERING THE 3D STRUCTURE OF TUBULAR OBJECTS FROM STEREO SILHOUETTES

机译:从立体轮廓恢复管状物体的3D结构

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摘要

Although silhouette-based image understanding is attractive from an engineering viewpoint, recovering 3D shape from a single stereo pair of silhouette images of a generic multiple-object scene is a highly underconstrained problem. With respect to a gray-level-based approach, the the loss of data due to mutual visual occlusions are even more severe. These problems are alleviated when the observed objects can be assumed to belong to some restricted class. In this paper we consider the case of almost vertical tubular objects (AVTOs), i.e. generalized cylinders with some restrictions on their axis' shape and pose relative to the stereo pair. This restriction, together with the assumption that the scene must be explained with the minimum number of objects consistent with the observations, allows one to devise an effective reconstruction algorithm. The object shape/location parameters are estimated by recursive least-squares (Kalman) filtering. Constrained blind tracking is performed on the occluded sections by feeding the filters with the most likely parameter values compatible with the constraints induced by the observed images. The case of AVTOs with circular cross-section is analyzed in some detail, with examples taken from an actual implementation of the algorithm in the field of agricultural automation. (C) 1997 Pattern Recognition Society. Published by Elsevier Science Ltd. [References: 10]
机译:尽管从工程的角度来看,基于轮廓的图像理解是有吸引力的,但是从通用的多对象场景的一对立体声立体图像中恢复3D形状仍然是一个严重受限的问题。对于基于灰度的方法,由于相互的视觉遮挡而导致的数据丢失甚至更加严重。当可以将观察对象假定为某个受限类时,可以缓解这些问题。在本文中,我们考虑了几乎垂直的管状物体(AVTO)的情况,即广义圆柱体,其轴的形状和相对于立体声对的姿势有所限制。这一限制,再加上一个假设,即必须用与观察结果一致的最少对象数来说明场景,这使人们可以设计出一种有效的重建算法。对象形状/位置参数是通过递归最小二乘(Kalman)滤波估计的。通过为滤镜提供最可能的参数值来与遮挡部分进行约束盲跟踪,这些参数值与观察到的图像引起的约束条件兼容。对具有圆形横截面的AVTO的情况进行了详细分析,并举例说明了该算法在农业自动化领域的实际实现。 (C)1997模式识别学会。由Elsevier Science Ltd.发布[参考:10]

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