MV-CC: Mask Enhanced Video Model for Remote Sensing Change Caption
Remote sensing image change caption (RSICC) aims to provide natural language descriptions for bi-temporal remote sensing images. Since Change Caption (CC) task requires both spatial and temporal features, previous works follow an encoder-fusion-decoder architecture. They use an image encoder to extr...
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Zusammenfassung: | Remote sensing image change caption (RSICC) aims to provide natural language
descriptions for bi-temporal remote sensing images. Since Change Caption (CC)
task requires both spatial and temporal features, previous works follow an
encoder-fusion-decoder architecture. They use an image encoder to extract
spatial features and the fusion module to integrate spatial features and
extract temporal features, which leads to increasingly complex manual design of
the fusion module. In this paper, we introduce a novel video model-based
paradigm without design of the fusion module and propose a Mask-enhanced Video
model for Change Caption (MV-CC). Specifically, we use the off-the-shelf video
encoder to simultaneously extract the temporal and spatial features of
bi-temporal images. Furthermore, the types of changes in the CC are set based
on specific task requirements, and to enable the model to better focus on the
regions of interest, we employ masks obtained from the Change Detection (CD)
method to explicitly guide the CC model. Experimental results demonstrate that
our proposed method can obtain better performance compared with other
state-of-the-art RSICC methods. The code is available at
https://github.com/liuruixun/MV-CC. |
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DOI: | 10.48550/arxiv.2410.23946 |