Multi-Modal Building Change Detection for Large-Scale Small Changes: Benchmark and Baseline
Ye Wang, Wei Lu, Zhihui You, Keyan Chen, Tongfei Liu, Kaiyu Li, Hongruixuan Chen, Qingling Shu, Sibao Chen

TL;DR
This paper introduces a new large-scale multi-modal dataset and a novel neural network architecture for detecting small building changes in complex remote sensing imagery, leveraging RGB and NIR data for improved accuracy.
Contribution
The paper presents the LSMD dataset for multi-modal change detection and proposes MSCNet, a new network with modules for enhanced feature fusion and local detail preservation.
Findings
MSCNet outperforms existing methods across various configurations.
The LSMD dataset enables rigorous evaluation of multi-modal change detection.
Multi-modal fusion significantly improves detection of small building changes.
Abstract
Change detection in optical remote sensing imagery is susceptible to illumination fluctuations, seasonal changes, and variations in surface land-cover materials. Relying solely on RGB imagery often produces pseudo-changes and leads to semantic ambiguity in features. Incorporating near-infrared (NIR) information provides heterogeneous physical cues that are complementary to visible light, thereby enhancing the discriminability of building materials and tiny structures while improving detection accuracy. However, existing multi-modal datasets generally lack high-resolution and accurately registered bi-temporal imagery, and current methods often fail to fully exploit the inherent heterogeneity between these modalities. To address these issues, we introduce the Large-scale Small-change Multi-modal Dataset (LSMD), a bi-temporal RGB-NIR building change detection benchmark dataset targeting…
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Taxonomy
TopicsRemote-Sensing Image Classification · Remote Sensing in Agriculture · Remote Sensing and LiDAR Applications
