Digital image processing techniques have wide applications in different scientific fields including the medicine. By use of image processing algorithms, physicians have been more successful in diagnosis of different diseases and have achieved much better treatment results. In this paper, we propose an automatic method for segmenting the skin lesions and extracting features that are associated to them. At this aim, a combination of Speeded-Up Robust Features (SURF) and Active Contour Model (ACM), is used. In the suggested method, at first region of skin lesion is segmented from the whole skin image, and then some features like the mean, variance, RGB and HSV parameters are extracted from the segmented region. Comparing the segmentation results, by use of Otsu thresholding, our proposed method, shows the superiority of our procedure over the Otsu theresholding method. Segmentation of the skin lesion by the proposed method and Otsu thresholding compared the results with physician's manual method. The proposed method for skin lesion segmentation, which is a combination of SURF and ACM, gives the best result. For empirical evaluation of our method, we have applied it on twenty different skin lesion images. Obtained results confirm the high performance, speed and accuracy of our method.
翻译:数字图像处理技术在包括医学在内的不同科学领域有着广泛的应用。通过使用图像处理算法,医生在诊断不同疾病方面比较成功,并取得了更好的治疗结果。在本文中,我们提议了一种将与其相关的皮肤损伤和提取特征进行分解的自动方法。为此,使用了加速增强强力特征(SURF)和活跃轮廓模型(ACM)相结合的方法。在建议的方法中,在皮肤损害的最初区域将整个皮肤图象分割开来,然后从分块区域提取一些平均值、差异值、RGB和HSV参数等特征。通过使用Otsu阈值(我们提议的方法)比较了分解结果,显示了我们的程序优于Otsu所持有的方法。用拟议方法对皮肤损伤进行分解,Otsu的阈值与医生的手动方法对比结果。拟议的皮肤损伤分解方法是SURF和ACM的组合,它提供了最佳的结果。关于我们方法的实验性精确性评估,我们采用了20种方法。