The monitoring of coastal wetlands is of great importance to the protection of marine and terrestrial ecosystems. However, due to the complex environment, severe vegetation mixture, and difficulty of access, it is impossible to accurately classify coastal wetlands and identify their species with traditional classifiers. Despite the integration of multisource remote sensing data for performance enhancement, there are still challenges with acquiring and exploiting the complementary merits from multisource data. In this paper, the Deepwise Feature Interaction Network (DFINet) is proposed for wetland classification. A depthwise cross attention module is designed to extract self-correlation and cross-correlation from multisource feature pairs. In this way, meaningful complementary information is emphasized for classification. DFINet is optimized by coordinating consistency loss, discrimination loss, and classification loss. Accordingly, DFINet reaches the standard solution-space under the regularity of loss functions, while the spatial consistency and feature discrimination are preserved. Comprehensive experimental results on two hyperspectral and multispectral wetland datasets demonstrate that the proposed DFINet outperforms other competitive methods in terms of overall accuracy.
翻译:沿海湿地的监测对保护海洋和陆地生态系统非常重要,但是,由于环境复杂、植被混合严重、难以接触,因此无法准确分类沿海湿地,无法用传统分类方法查明其物种。尽管将多来源遥感数据综合起来,以提高性能,但在获取和利用多来源数据的补充优点方面仍然存在挑战。在本文件中,提议为湿地分类建立深层次地物相互作用网络(深层地物互动网络)。设计了一个深度交叉注意模块,从多来源地物组合中提取自我调节和交叉关系。这样,强调为分类提供有意义的补充信息。DFINet通过协调一致性损失、歧视损失和分类损失进行优化。因此,DFINet在损失的正常功能下达到标准解决办法空间,同时保持空间一致性和特征区分。两个超光谱和多光谱湿地数据集的综合实验结果表明,拟议的DFINet在总体准确性方面超越了其他竞争性方法。