Khalid Shehzad, Jamil Uzma, Saleem Kashif, Akram M Usman, Manzoor Waleed, Ahmed Waqas, Sohail Amina
Department of Computer Engineering, Bahria University, Islamabad, Pakistan.
Department of Computer Engineering, Bahria University, Islamabad, Pakistan ; Government College University, Faisalabad, Pakistan.
Springerplus. 2016 Sep 19;5(1):1603. doi: 10.1186/s40064-016-3211-4. eCollection 2016.
This paper presents a novel technique for segmentation of skin lesion in dermoscopic images based on wavelet transform along with morphological operations. The acquired dermoscopic images may include artifacts inform of gel, dense hairs and water bubble which make accurate segmentation more challenging. We have also embodied an efficient approach for artifacts removal and hair inpainting, to enhance the overall segmentation results. In proposed research, color space is also analyzed and selection of blue channel for lesion segmentation have confirmed better performance than techniques which utilizes gray scale conversion. We tackle the problem by finding the most suitable mother wavelet for skin lesion segmentation. The performance achieved with 'bior6.8' Cohen-Daubechies-Feauveau biorthogonal wavelet is found to be superior as compared to other wavelet family. The proposed methodology achieves 93.87 % accuracy on dermoscopic images of PH2 dataset acquired at Dermatology Service of Hospital Pedro Hispano, Matosinhos, Portugal.
本文提出了一种基于小波变换并结合形态学运算的皮肤镜图像中皮肤病变分割新技术。采集到的皮肤镜图像可能包含凝胶、浓密毛发和水泡等形式的伪影,这使得准确分割更具挑战性。我们还采用了一种有效的伪影去除和毛发修复方法,以提高整体分割效果。在本研究中,还分析了颜色空间,并证实选择蓝色通道进行病变分割比利用灰度转换的技术具有更好的性能。我们通过寻找最适合皮肤病变分割的母小波来解决这个问题。与其他小波族相比,发现使用“bior6.8”科恩-达布希耶-费奥veau双正交小波所取得的性能更优。所提出的方法在葡萄牙马托西纽什市佩德罗·伊斯帕诺医院皮肤科采集的PH2数据集的皮肤镜图像上达到了93.87%的准确率。