A distributed edge detection and surface reconstruction algorithm

N. Ratha, T. Acar, M. Gokmen, A.K. Jain
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引用次数: 9

Abstract

A scalable parallel algorithm for edge detection and surface reconstruction is presented. The algorithm is based on fitting a weak membrane to the pixel gray valves by minimizing the associated energy functional. The edge detection process is modeled as a line process and used as a constraint in minimizing the energy functional of the image. The optimal edge assignment cannot be obtained directly as the energy function is non-convex. Using graduated non-convexity (GNC) approach, the energy is minimized. The proposed parallel algorithm has been implemented on a cluster of workstations using the PVM communication library. The results of parallel implementation on synthetic and natural images are presented. The speedup is observed to be near-linear, thus providing scalability with the problem size. The parallel processing approach presented here can be extended to solve similar problems (e.g., image restoration, and image compression) which use regularization techniques.
分布式边缘检测和表面重建算法
提出了一种可扩展的边缘检测与表面重构并行算法。该算法通过最小化相关能量函数,将弱膜拟合到像素灰度阀上。边缘检测过程被建模为直线过程,并用作最小化图像能量函数的约束。由于能量函数是非凸的,不能直接得到最优的边缘分配。采用梯度非凸性(GNC)方法,使能量最小化。利用PVM通信库在一个工作站集群上实现了该并行算法。给出了在合成图像和自然图像上并行实现的结果。观察到加速是接近线性的,因此提供了与问题大小相关的可伸缩性。这里提出的并行处理方法可以扩展到解决使用正则化技术的类似问题(例如,图像恢复和图像压缩)。
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