High-Resolution Remote Sensing Imagery for the Recognition of Traditional Villages

Mengchen Wang, Linshuhong Shen
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Abstract

Traditional Chinese villages, vital carriers of traditional culture, have faced significant alterations due to urbanization in recent years, urgently necessitating artificial intelligence data updates. This study integrates high spatial resolution remote sensing imagery with deep learning techniques, proposing a novel method for identifying rooftops of traditional Chinese village buildings using high-definition remote sensing images. Using 0.54 m spatial resolution imagery of traditional village areas as the data source, this method analyzes the geometric and spectral image characteristics of village building rooftops. It constructs a deep learning feature sample library tailored to the target types. Employing a semantically enhanced version of the improved Mask R-CNN (Mask Region-based Convolutional Neural Network) for building recognition, the study conducts experiments on localized imagery from different regions. The results demonstrated that the modified Mask R-CNN effectively identifies traditional village building rooftops, achieving an of 0.7520 and an of 0.7400. It improves the current problem of misidentification and missed detection caused by feature heterogeneity. This method offers a viable and effective approach for industrialized data monitoring of traditional villages, contributing to their sustainable development.
用于识别传统村落的高分辨率遥感图像
中国传统村落是传统文化的重要载体,近年来由于城市化进程的推进,传统村落面临着巨大的变化,迫切需要人工智能数据的更新。本研究将高空间分辨率遥感图像与深度学习技术相结合,提出了一种利用高清遥感图像识别中国传统村落建筑屋顶的新方法。该方法以传统村落地区的 0.54 米空间分辨率图像为数据源,分析了村落建筑屋顶的几何和光谱图像特征。它根据目标类型构建了一个深度学习特征样本库。研究采用语义增强版的改进型掩膜 R-CNN(基于掩膜区域的卷积神经网络)进行建筑物识别,并在不同区域的本地化图像上进行了实验。结果表明,改进型掩码 R-CNN 能有效识别传统村落建筑屋顶,识别率分别达到 0.7520 和 0.7400。它改善了目前因特征异质性而导致的误识别和漏检测问题。该方法为传统村落的工业化数据监测提供了一种可行而有效的方法,有助于传统村落的可持续发展。
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