基于深度卷积神经网络的卫星图像分类及其对结构的影响

Fadime Diker, Ilker Erkan
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引用次数: 0

摘要

与传统的机器学习方法不同,可以从图像、视频、音频和文本数据中学习的深度学习方法,特别是最近随着硬件能力的提高,也越来越成功。考虑到深度学习方法在许多不同领域的成功和好处,随着数据的增加,预计在建筑领域也会产生类似的效果。在这项研究中,我们专注于纹理的细节,而不是一般的图像。在此方向上,利用深度卷积神经网络开发的模型对云、沙漠、绿地和水体等4500张卫星图像进行分类。在开发的模型中,对之前未使用的测试数据(675张)进行分类,云图像的准确率为0.97,沙漠图像的准确率为0.98,绿地图像的准确率为0.96,水体图像的准确率为0.98。虽然云和沙漠的图像、绿地和水体的图像有相似之处,但在纹理上的成功表明,它可以成功地检测、分析和分类建筑材料。利用深度卷积神经网络对建筑材料和元素进行成功的识别、分析和分类,将能够通过对众多数据的形状识别,特别是在建筑设计过程中的信息收集阶段,促进获取适当和有用的数据。因此,通过获得人工数据分析无法获得的更全面的数据,将有助于做出更准确的决策。学习深度卷积神经网络中数据分类的独特特征也解释了架构设计的差异和相似之处。这种情况揭示了设计中隐藏的关系,从而为建筑师提供了创作和原创设计的机会。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
CLASSIFICATION OF SATELLITE IMAGES WITH DEEP CONVOLUTIONAL NEURAL NETWORKS AND ITS EFFECT ON ARCHITECTURE
Unlike traditional machine learning methods, deep learning methods that can learn from image, video, audio, and text data, especially recently with the increase in hardware power, are also increasing in success. Considering the success and benefits of deep learning methods in many different fields with increasing data, similar effects are expected in architecture. In this study, we focused on textures by going down to specifics rather than general images. In this direction, a total of 4500 satellite images belonging to cloud, desert, green areas and water bodies were classified in the model developed using deep convolutional neural networks. In the developed model, 0.97 accuracy for cloud images, 0.98 accuracy for desert images, 0.96 accuracy for green areas images and 0.98 accuracy for water bodies images were obtained in the classification of previously unused test data (675 images). Although there are similarities in the images of cloud and desert, and images of green areas and water bodies, this success in textures shows that it can be successful in detecting, analyzing, and classifying architectural materials. Successful recognition, analysis and classification of architectural materials and elements with deep convolutional neural networks will be able to facilitate the acquisition of appropriate and useful data through shape recognition among many data, especially at the information collection phase in the architectural design process. Thus, it will help to take more accurate decisions by obtaining more comprehensive data that cannot be obtained from manual data analysis. Learning the distinctive features for classification of data in deep convolutional neural networks also explains architectural design differences and similarities. This situation reveals the hidden relationship in the designs and thus can offer architects the opportunity to make creative and original designs.
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