扩展卷积层的纹理图像分类

S. G, P. N
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引用次数: 0

摘要

这项工作开发了一个紧凑的深度学习架构来学习和识别纹理特征。建议的方法主要集中在神经网络的特征提取层。本文提出的纹理扩展卷积神经网络(T-DCNN)由具有扩展卷积层的块支持。这些块帮助模型检索分类图像所需的底层纹理属性。构建的网络在kylberg纹理数据库v.1.0上进行训练和评估。该模型的准确率为98.88%。研究表明,在相同的环境下,该模型在降低纹理分类所需的训练时间和参数方面优于传统的CNN模型。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Texture Image Classification with Dilated Convolution Layers
This work develops a compact deep-learning architecture to learn and recognize texture features. The suggested approach primarily concentrates on the feature-extracting layers of the neural network. The proposed Texture-Dilated Convolutional Neural Network (T-DCNN) is supported by blocks with dilated convolution layers. These blocks assist the model in retrieving the underlying texture attributes required for categorizing images. The built network was trained and evaluated on the kylberg texture database v.1.0. The model produced a result with 98.88% accuracy rate. The investigation shows that under same environment, the proposed model outperforms the conventional CNN model by lowering the required training time and parameters to categorize textures.
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