Abstract

The success of deep learning in skin lesion classification mainly depends on the ultra-deep neural network and the significantly large training data set. Deep learning training is usually time-consuming, and large datasets with labels are hard to obtain, especially skin lesion images. Although pre-training and data augmentation can alleviate these issues, there are still some problems: (1) the data domain is not consistent, resulting in the slow convergence; and (2) low robustness to confusing skin lesions. To solve these problems, we propose an efficient structural pseudoinverse learning-based hierarchical representation learning method. Preliminary feature extraction, shallow network feature extraction and deep learning feature extraction are carried out respectively before the classification of skin lesion images. Gabor filter and pre-trained deep convolutional neural network are used for preliminary feature extraction. The structural pseudoinverse learning (S-PIL) algorithm is used to extract the shallow features. Then, S-PIL preliminarily identifies the skin lesion images that are difficult to be classified to form a new training set for deep learning feature extraction. Through the hierarchical representation learning, we analyze the features of skin lesion images layer by layer to improve the final classification. Our method not only avoid the slow convergence caused by inconsistency of data domain but also enhances the training of confusing examples. Without using additional data, our approach outperforms existing methods in the ISIC 2017 and ISIC 2018 datasets.

Highlights

  • Skin cancer is a common disease that afflicts people’s health

  • hierarchical representation learning (HRL) method analyzes the features of skin lesion images layer by layer from simple features to complex features to improve the final classification. (II) The structural pseudoinverse learning (S-Pseudoinverse learning algorithm (PIL)) algorithm proposed in this paper is an efficient shallow network, whose input layer combines the global information of the image and the local texture information— Gabor features

  • To address the issues of long training periods and poor robustness to confusing examples in the classification task of skin lesion images, we propose the efficient structural pseudoinverse learning-based hierarchical representation learning for skin lesion classification

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Summary

Introduction

Skin cancer is a common disease that afflicts people’s health. There are many types of skin cancer, among which melanoma is a very serious cancer that can be fatal if not treated timely. To expand the capacity of skin lesion datasets, researchers have developed different data augmentation technologies [3,37], enriching the data examples of the original dataset automatically to help obtain a more robust skin lesion classification model Despite these progress, we find that current approaches are still sub-optimal to address the long training period and limited training data issues due to the following potential reasons: (1) there is usually a significant domain gap between the pre-training datasets like the ImageNet and the skin lesion datasets. (II) The S-PIL algorithm proposed in this paper is an efficient shallow network, whose input layer combines the global information of the image and the local texture information— Gabor features It makes further feature extraction on skin lesion images, and can efficiently identifies confusing skin lesion images for the subsequent deep learning feature extraction.

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