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Active contour model with adaptive weighted function for robust image segmentation under biased conditions

机译:具有自适应加权函数的主动轮廓模型,用于偏置条件下的鲁棒图像分段

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摘要

The segmentation of images under biased conditions such as low contrast, high-intensity inhomogeneity, and noise is a challenge for any image segmentation model. The ideal image segmentation model must be capable of segmenting images with maximum accuracy and a minimum false-positive rate under biased conditions. In this paper, we propose a region-based active contour model (ACM), called global signed pressure and K-means clustering based on local correntropy with the exponential family (GSLCE), to address segmentation challenges under biased conditions. An adaptive weighted function is formulated based on the global and local image differences such that a single weighted function can drive both the global and local intensities. Further, the Riemannian steepest descent method is used for convergence of the proposed GSLCE energy function, and a Gaussian kernel is applied for spatial smoothing to obviate the computationally expensive level-set re-initialization. The experimental results show that, compared with state-of-the-art ACMs, the proposed GSLCE model obtained the best visual image segmentation results for synthetic and real images under biased conditions. Further, the qualitative and quantitative experimental results validate that the proposed model outperforms the state-of-the-art ACMs by yielding higher values of performance metrics. Moreover, the proposed GSLCE model requires substantially less processing time compared to the state-of-the-art ACMs.
机译:在偏置条件下的图像下的图像分割,例如低对比度,高强度不均匀性和噪声是任何图像分割模型的挑战。理想的图像分割模型必须能够在偏置条件下具有最大精度和最小假阳性率的图像​​分割图像。在本文中,我们提出了一种基于地区的有源轮廓模型(ACM),称为全局签名压力和基于局部套管的K-Means聚类,与指数家庭(GSLCE),在偏见条件下解决分割挑战。基于全局和局部图像差异,使得单个加权函数可以驱动全局和局部强度。此外,Riemannian速度下降方法用于所提出的GSLCE能量函数的收敛,并且应用高斯内核用于空间平滑,以避免计算昂贵的电平集重新初始化。实验结果表明,与最先进的ACMS相比,所提出的GSLCE模型在偏置条件下获得了合成和真实图像的最佳视觉图像分段结果。此外,定性和定量实验结果验证了所提出的模型通过产生更高的性能度量值来实现最先进的ACM。此外,与最先进的ACMS相比,所提出的GSLCE模型需要更少的处理时间。

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