A Level Set Model Driven by New Signed Pressure Force Function for Image Segmentation

Soumen Biswas, Ranjay Hazra, S. Prasad, Arvind Sirvee
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Abstract

An image segmentation model using histogram-based image fitting (HF) energy is proposed to identify objects with poorly defined boundaries. The proposed energy model considers an improved fitting energy function based on normalized histogram and average intensities of objects inside as well as outside the contour curve. The fitting energy functions are computed before the curve evolution thereby reducing the complexity of intensity inhomogeneity images. Further, a new signed pressure force function is incorporated in the proposed energy model which can increase the efficiency of the curve evolution process at blur edges or at weak edge regions. The comparative analysis of the proposed energy model produces better segmentation results compared to the other state-of-the-art energy models namely the Li et. al. model, local binary fitting (LBF), and Chen-Vese (C-V) models. The proposed model is also robust to intensity inhomogeneity. In addition, the calculation of the Jaccard Index (JI) proves the robustness of the proposed energy model.
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一种新的带符号压力函数驱动的水平集模型用于图像分割
提出了一种基于直方图的图像拟合能量的图像分割模型,用于识别边界不明确的目标。提出的能量模型考虑了一种改进的基于归一化直方图和轮廓曲线内外物体平均强度的拟合能量函数。在曲线演化之前计算拟合能量函数,从而降低了强度非均匀性图像的复杂度。此外,在能量模型中引入了新的带符号的压力力函数,提高了模糊边缘和弱边缘区域曲线演化过程的效率。与Li et. al.模型、局部二值拟合(LBF)和Chen-Vese (C-V)模型等其他最先进的能量模型相比,所提出的能量模型的对比分析产生了更好的分割结果。该模型对强度不均匀性也具有鲁棒性。此外,通过对Jaccard指数(JI)的计算,验证了所提能量模型的鲁棒性。
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