论文标题
使用颜色信息对皮肤镜图像进行显着分割
Saliency-based segmentation of dermoscopic images using color information
论文作者
论文摘要
皮肤病变分割是有效的非侵入性计算机辅助早期诊断黑色素瘤的关键步骤之一。本文研究了除显着性外,还可以使用颜色信息自动确定色素的病变区域。与仅使用显着性的大多数现有分割方法不同,以区分周围区域的皮肤病变,我们提出了一种新型方法,该方法采用了双纳拉化过程,并受到人类视觉感知的启发,与新的感知标准相结合,这与输入图像数据分布的显着性和颜色的性质有关。作为完善所提出方法准确性的一种手段,分割步骤之前是旨在减轻计算负担,消除工件和改善对比度的预处理。我们已经在两个公共数据库上评估了该方法,包括1497个皮肤镜图像。我们还将其性能与针对皮肤镜图像明确设计的经典和最新的基于显着性的方法进行了比较。定性和定量评估表明,与其他现有基于显着性的分割方法相比,该方法会产生准确的皮肤病变细分,并具有令人满意的性能。
Skin lesion segmentation is one of the crucial steps for an efficient non-invasive computer-aided early diagnosis of melanoma. This paper investigates how color information, besides saliency, can be used to determine the pigmented lesion region automatically. Unlike most existing segmentation methods using only the saliency in order to discriminate against the skin lesion from the surrounding regions, we propose a novel method employing a binarization process coupled with new perceptual criteria, inspired by the human visual perception, related to the properties of saliency and color of the input image data distribution. As a means of refining the accuracy of the proposed method, the segmentation step is preceded by a pre-processing aimed at reducing the computation burden, removing artifacts, and improving contrast. We have assessed the method on two public databases, including 1497 dermoscopic images. We have also compared its performance with classical and recent saliency-based methods designed explicitly for dermoscopic images. The qualitative and quantitative evaluation indicates that the proposed method is promising since it produces an accurate skin lesion segmentation and performs satisfactorily compared to other existing saliency-based segmentation methods.