Melanoma Classification via Hybrid Saliency and Conditional Random Field with Bottleneck to Optimize DeepLab

IF 1.7 Q3 COMPUTER SCIENCE, INTERDISCIPLINARY APPLICATIONS
V. T. H. Tuyet, N. T. Binh
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引用次数: 0

Abstract

Neural networks overcome drawbacks of vision tasks by becoming convolutional in a wide range of layers. The salient map is affected by multilevels of strong pixels (superpixels) in global images and that is dependent on the hard threshold for their dividing. Deep neural networks have been established for saliency prediction of segmentation because the feature extraction must be suited to the input data. The convolutional neural network (CNN) also endures conflict between spatial pattern and a likeness of salient objects. Semantic segmentation is one of the approaches to continue classification based on these features. Therefore, upgrading the extraction process can be of use in saliency. In this work, we optimize DeepLab based on an atrous convolutional and a conditional random field (CRF) with a bottleneck in the semantic segmentation method, which serves for classification. The backbone of deep feature extraction is atrous convolution and the bottleneck based on CRF for hybrid saliency in the encoder-decoder system. The classification results are compared with some approaches for saliency prediction of recent deeper methods in an ISIC 2017 dataset. The results give better values not only for saliency prediction for segmentation but also for training and testing for classification.
基于混合显著性和瓶颈条件随机场的黑色素瘤分类优化DeepLab
神经网络通过在大范围的层中变得卷积来克服视觉任务的缺点。显著图受全局图像中多层强像素(超像素)的影响,这取决于它们划分的硬阈值。由于特征提取必须与输入数据相适应,因此建立了深度神经网络用于分割的显著性预测。卷积神经网络(CNN)也承受着空间格局与显著物体相似性之间的冲突。语义分割是基于这些特征进行继续分类的方法之一。因此,改进提取工艺可以在显著性上使用。在这项工作中,我们对DeepLab进行了基于属性卷积和条件随机场(CRF)的优化,该方法在语义分割方法中存在瓶颈,用于分类。深度特征提取的核心是属性卷积,而基于CRF的混合显著性是编码器-解码器系统的瓶颈。将分类结果与ISIC 2017数据集中近期深层方法的一些显著性预测方法进行了比较。结果不仅为分割的显著性预测提供了更好的值,也为分类的训练和测试提供了更好的值。
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来源期刊
CiteScore
4.00
自引率
46.20%
发文量
143
审稿时长
12 weeks
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