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Adaptive segmentation based on multi-classification model for dermoscopy images

机译:基于多分类模型的皮肤镜图像自适应分割

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Segmentation accuracy of dermoscopy images is important in the computer-aided diagnosis of skin cancer and a wide variety of segmentation methods for dermoscopy images have been developed. Considering that each method has its strengths and weaknesses, a novel adaptive segmentation framework based on multi-classification model is proposed for dermoscopy images. Firstly, five patterns of images are summarized according to the factors influencing segmentation. Then the matching relation is established between each image pattern and its optimal segmentationmethod. Next, the given image is classified into one of the five patterns by the multi-classification model based on BP neural network. Finally, the optimal segmentation method for this image is selected according to the matching relation, and then the image is effectively segmented. Experiments show that the proposed method delivers better accuracy and more robust segmentation results compared with the other seven state-of-the-art methods.
机译:皮肤镜图像的分割精度在皮肤癌的计算机辅助诊断中很重要,并且已经开发了多种用于皮肤镜图像的分割方法。考虑到每种方法都有其优缺点,提出了一种基于多分类模型的皮肤镜图像自适应分割框架。首先,根据影响分割的因素,总结出五种图像模式。然后在每个图像模式与其最佳分割方法之间建立匹配关系。接下来,通过基于BP神经网络的多分类模型将给定的图像分类为五种模式之一。最后,根据匹配关系选择最佳图像分割方法,对图像进行有效分割。实验表明,与其他七个最新方法相比,该方法具有更高的准确性和更强的分割效果。

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