Goyal Vinat, Sharma Sanjeev
Indian Institute of Information Technology, Pune, India.
Multimed Tools Appl. 2022 Dec 10:1-24. doi: 10.1007/s11042-022-14276-y.
The texture is the most fundamental aspect of a picture that contributes to its recognition. Computer vision challenges such as picture identification and segmentation are built on the foundation of texture analysis. Various images of satellite, forestry, medical etc. have been identifiable because of textures. This work aims to offer texture classification models that will outperform previously presented methods. In this work, transfer learning was applied to attain this goal. MobileNetV3 and InceptionV3 are the two pre-trained models employed. Brodatz, Kylberg, and Outex texture datasets were used to evaluate the models. The models achieved excellent results and achieved the objective in most cases. Classification accuracy obtained for the Kylberg dataset were 100% and 99.89%. For the Brodatz dataset, the classification accuracy obtained was 99.83% and 99.94%. For the Outex datasets, the classification accuracy obtained was 99.48% and 99.48%. The model outputs the corresponding label of the texture of the image.
纹理是图片中有助于识别的最基本方面。诸如图片识别和分割等计算机视觉挑战是建立在纹理分析基础之上的。由于纹理,卫星、林业、医学等各种图像得以识别。这项工作旨在提供性能优于先前提出方法的纹理分类模型。在这项工作中,应用迁移学习来实现这一目标。使用了MobileNetV3和InceptionV3这两个预训练模型。使用Brodatz、Kylberg和Outex纹理数据集来评估模型。这些模型取得了优异的结果,并且在大多数情况下实现了目标。Kylberg数据集获得的分类准确率分别为100%和99.89%。对于Brodatz数据集,获得的分类准确率为99.83%和99.94%。对于Outex数据集,获得的分类准确率为99.48%和99.48%。该模型输出图像纹理的相应标签。