2022
DOI: 10.3390/rs14235969
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Self-Attention and Convolution Fusion Network for Land Cover Change Detection over a New Data Set in Wenzhou, China

Abstract: With the process of increasing urbanization, there is great significance in obtaining urban change information by applying land cover change detection techniques. However, these existing methods still struggle to achieve convincing performances and are insufficient for practical applications. In this paper, we constructed a new data set, named Wenzhou data set, aiming to detect the land cover changes of Wenzhou City and thus update the urban expanding geographic data. Based on this data set, we provide a new s… Show more

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Cited by 4 publications
(2 citation statements)
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“…To address the problem of inconsistent feature scales in LCCD, Yiqun Zhu proposed a fusion model based on self-attention networks and CNN, which can effectively capture multi-scale and local features to refine the results of LCCD [88]. Zhiyong Lv proposed a multi-scale network of LCCD guided by change gradient images, embedding multiscale information attention modules into the U-Net backbone network to merge multi-scale information from dual-date images [89].…”
Section: Supervised Learning Methodsmentioning
confidence: 99%
“…To address the problem of inconsistent feature scales in LCCD, Yiqun Zhu proposed a fusion model based on self-attention networks and CNN, which can effectively capture multi-scale and local features to refine the results of LCCD [88]. Zhiyong Lv proposed a multi-scale network of LCCD guided by change gradient images, embedding multiscale information attention modules into the U-Net backbone network to merge multi-scale information from dual-date images [89].…”
Section: Supervised Learning Methodsmentioning
confidence: 99%
“…In this context, building change detection (BCD) has received increasing attention in the past decade and can realize effective change monitoring for single-target buildings, including new buildings and disappearing buildings. Therefore, BCD has potential value in many practical applications, such as urban development planning [6,7], evaluation of the urbanization process [8], and urban disaster prevention and mitigation [9,10].…”
Section: Introductionmentioning
confidence: 99%