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GPU Accelerated Edge-Region Based Level Set Evolution Constrained by 2D Gray-Scale Histogram

机译:受2D灰度直方图约束的基于GPU加速边缘区域的水平集演化

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摘要

Due to its intrinsic nature which allows to easily handle complex shapes and topological changes, the level set method (LSM) has been widely used in image segmentation. Nevertheless, LSM is computationally expensive, which limits its applications in real-time systems. For this purpose, we propose a new level set algorithm, which uses simultaneously edge, region, and 2D histogram information in order to efficiently segment objects of interest in a given scene. The computational complexity of the proposed LSM is greatly reduced by using the highly parallelizable lattice Boltzmann method (LBM) with a body force to solve the level set equation (LSE). The body force is the link with image data and is defined from the proposed LSE. The proposed LSM is then implemented using an NVIDIA graphics processing units to fully take advantage of the LBM local nature. The new algorithm is effective, robust against noise, independent to the initial contour, fast, and highly parallelizable. The edge and region information enable to detect objects with and without edges, and the 2D histogram information enable the effectiveness of the method in a noisy environment. Experimental results on synthetic and real images demonstrate subjectively and objectively the performance of the proposed method.
机译:由于其固有的性质,可以轻松处理复杂的形状和拓扑变化,因此,水平集方法(LSM)已广泛用于图像分割中。然而,LSM在计算上是昂贵的,这限制了它在实时系统中的应用。为此,我们提出了一种新的水平集算法,该算法同时使用边缘,区域和2D直方图信息,以便有效地分割给定场景中的关注对象。通过使用具有体力的高度可并行化的格子Boltzmann方法(LBM)来解决水平集方程(LSE),可以大大降低所提出的LSM的计算复杂性。体力是与图像数据的链接,由提议的LSE定义。然后,使用NVIDIA图形处理单元实施建议的LSM,以充分利用LBM的本地特性。新算法有效,抗噪声,与初始轮廓无关,快速且高度可并行化。边缘和区域信息可以检测带有和不带有边缘的对象,而2D直方图信息可以使该方法在嘈杂的环境中有效。在合成图像和真实图像上的实验结果在主观和客观上证明了该方法的性能。

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