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Pigmented skin lesion segmentation based on random forest and full convolutional neural networks

机译:基于随机林和全卷大神经网络的着色皮肤病变分割

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Segmentation of pigmented lesions is often affected by factors such as hair around the skin lesions, artificial markings, etc., and the complexity of the lesion itself, such as lesions and skin boundaries is not clear, the internal color of lesions is variable, etc., resulting in segmentation difficulties. Aiming at the problem that the segmentation method of pigmented skin lesions using only random forests is not accurate, a segmentation method for pigmented skin lesion using a combination of random forest and fully convolutional neural networks (FCN) is proposed. This method firstly classifies and recognizes skin lesion images based on random forests to obtain a probability distribution of the lesions and the background. Then, the other probability distribution is obtained using FCN based on an improved loss function. Finally, the classification results of random forest and FCN are fused into the final image segmentation results. The experimental results show that the combination of random forest and FCN yields better performances than using random forest alone, in particular, can increase the sensitivity by about 20%.
机译:着色病变的分割通常受到皮肤病变周围的毛发,人造标记等的因素的影响,以及病变本身的复杂性,例如病变和皮肤界限尚不清楚,病变的内部颜色是可变的,等等。,导致细分困难。针对仅使用随机森林的着色皮肤病变的分割方法的问题不准确,提出了使用随机森林和全卷积神经网络(FCN)组合的着色皮肤病变的分段方法。该方法首先基于随机森林对皮肤病变图像进行分类和识别,以获得病变和背景的概率分布。然后,使用FCN基于改进的损耗函数获得其他概率分布。最后,随机森林和FCN的分类结果融合到最终的图像分割结果中。实验结果表明,随机森林和FCN的组合产生的性能比使用随机森林,特别是可以将敏感性增加约20%。

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