2021
DOI: 10.3390/rs13183707
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Looking for Change? Roll the Dice and Demand Attention

Abstract: Change detection, i.e., the identification per pixel of changes for some classes of interest from a set of bi-temporal co-registered images, is a fundamental task in the field of remote sensing. It remains challenging due to unrelated forms of change that appear at different times in input images. Here, we propose a deep learning framework for the task of semantic change detection in very high-resolution aerial images. Our framework consists of a new loss function, a new attention module, new feature extractio… Show more

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Cited by 54 publications
(24 citation statements)
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“…The network learns a spectral-spatialtemporal feature representation to generate features with rich spatial-temporal information, and combines a recurrent neural network with CNN to obtain change information. Diakogiannis et al [38] propose two methods based on ResNet, i.e., self-attention fusion and relative attention fusion. The former is used to enhance the attention of the region of interest in a single image, while the latter focuses on the correlation between dual-temporal images.…”
Section: Change Detection Methods Based On Deep Learningmentioning
confidence: 99%
“…The network learns a spectral-spatialtemporal feature representation to generate features with rich spatial-temporal information, and combines a recurrent neural network with CNN to obtain change information. Diakogiannis et al [38] propose two methods based on ResNet, i.e., self-attention fusion and relative attention fusion. The former is used to enhance the attention of the region of interest in a single image, while the latter focuses on the correlation between dual-temporal images.…”
Section: Change Detection Methods Based On Deep Learningmentioning
confidence: 99%
“…We briefly describe the FracTAL-ResUNet architecture and loss function here and refer the reader to Diakogiannis et al [35] and Waldner et al [31] for more details. A FracTAL-ResUNet has three main features, reflected in its name: (1) a self-attention layer called a FracTAL unit that is inserted into standard residual blocks, (2) skip-connections that combine the inputs and outputs of residual blocks (similar to in the canonical ResNet), and (3) an encoder-decoder architecture (similar to a U-Net).…”
Section: Neural Network Implementationmentioning
confidence: 99%
“…1. We use an attention-based CNN [35] followed by watershed segmentation to delineate field instances accurately (F1-score = 0.93, MCC = 0.65, median IoU = 0.86) across India. Airbus imagery yields higher performance than PlanetScope imagery.…”
Section: Introductionmentioning
confidence: 99%
“…Transfer a pre-trained model allows leveraging the knowledge of a source dataset to enhance the performance of a downstream task. ImageNet pre-training is widely used in change detection [7][8][9][10][11][12][13] and shows superior to random initialization, especially in small data regimes. Considering the domain gap between ImageNet and RS images, a new trend is to pre-train on the remote sensing data to learn the in-domain representations [10, 14-17, 19, 50-53].…”
Section: A Handling Label Insufficiency In CDmentioning
confidence: 99%
“…Despite the great success of contemporary deep learning (DL)-based CD methods [7], the lack of a large labeled CD dataset limits their generalization to real-world applications. One effective solution to handle the data insufficiency is to fine-tune the model from ImageNet pre-training [8][9][10][11][12][13].…”
Section: Introductionmentioning
confidence: 99%