基于深度卷积神经网络的多标签空间图像识别

Nagaraj N. Bhat, K. V. Archana Hebbar, Sachin S. Bhat, Jayalakshmi, Pooja, D. Harshitha
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引用次数: 1

摘要

这展示了通过深度学习框架对遥感卫星图像进行多标签分类和分割。在这里,提出的方法使用多标记的land - mercedes数据集和卫星图像来进行分类。通过卫星获取的图像首先进行预处理,如调整大小和空间模糊等操作。然后根据训练出来的类进行分类,对每个对象进行分类,最后进行分割,检测不同时间段特定位置的变化。该方法在测试集上的总体分类准确率约为98.58%,使用所提出的模型也实现了最小的验证损失0.0001468。这种方法的结果可用于更实际的应用,如城市规划,也可用于查明在禁区、森林等发生的非法活动。这里考虑的主要应用之一将有助于检测土地随时间变化的变化。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Multilabel Spatial Image Recognition using Deep Convolutional Neural Network
This exhibits multilabel classification and segmentation of remote sensing satellite images through the deep learning framework. Here, the proposed methodology uses multi labelled Land-Mercede dataset and satellite images to perform the classification. The images obtained through satellite are first preprocessed by perfroming the operations like resizing and spatial blurring. In the next step, it performs the classification to classify each object based on the classes trained and finally segmentation is carried out to detect the changes at a particular place in a different time period. This method has achieved an overall classification accuracy of about 98.58% on a test set and least validation loss of 0.0001468 was also achieved by using a proposed model. The result of this approach can be used for more practical applications like urban planning and also to identify illegal activities that take place in restricted areas, forest, etc.. One of the main applications considered here will help to detect changes that happen in land change over time.
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