Yu Chuang, Liu Yunpeng, Zhao Jinmiao, Wu Shuhang, Hu Zhuhua
IEEE Trans Image Process. 2023;32:5564-5579. doi: 10.1109/TIP.2023.3313488. Epub 2023 Oct 10.
Recently, feature relation learning has attracted extensive attention in cross-spectral image patch matching. However, most feature relation learning methods can only extract shallow feature relations and are accompanied by the loss of useful discriminative features or the introduction of disturbing features. Although the latest multi-branch feature difference learning network can relatively sufficiently extract useful discriminative features, the multi-branch network structure it adopts has a large number of parameters. Therefore, we propose a novel two-branch feature interaction learning network (FIL-Net). Specifically, a novel feature interaction learning idea for cross-spectral image patch matching is proposed, and a new feature interaction learning module is constructed, which can effectively mine common and private features between cross-spectral image patches, and extract richer and deeper feature relations with invariance and discriminability. At the same time, we re-explore the feature extraction network for the cross-spectral image patch matching task, and a new two-branch residual feature extraction network with stronger feature extraction capabilities is constructed. In addition, we propose a new multi-loss strong-constrained optimization strategy, which can facilitate reasonable network optimization and efficient extraction of invariant and discriminative features. Furthermore, a public VIS-LWIR patch dataset and a public SEN1-2 patch dataset are constructed. At the same time, the corresponding experimental benchmarks are established, which are convenient for future research while solving few existing cross-spectral image patch matching datasets. Extensive experiments show that the proposed FIL-Net achieves state-of-the-art performance in three different cross-spectral image patch matching scenarios.
近年来,特征关系学习在跨光谱图像块匹配中受到了广泛关注。然而,大多数特征关系学习方法只能提取浅层特征关系,并且伴随着有用判别特征的丢失或干扰特征的引入。尽管最新的多分支特征差异学习网络能够相对充分地提取有用的判别特征,但其采用的多分支网络结构具有大量参数。因此,我们提出了一种新颖的双分支特征交互学习网络(FIL-Net)。具体而言,提出了一种用于跨光谱图像块匹配的新颖特征交互学习思想,并构建了一个新的特征交互学习模块,该模块能够有效地挖掘跨光谱图像块之间的公共和私有特征,并提取具有不变性和可区分性的更丰富、更深层次的特征关系。同时,我们重新探索了用于跨光谱图像块匹配任务的特征提取网络,并构建了一个具有更强特征提取能力的新双分支残差特征提取网络。此外,我们提出了一种新的多损失强约束优化策略,该策略有助于合理的网络优化和高效提取不变和可区分特征。此外,构建了一个公共的VIS-LWIR图像块数据集和一个公共的SEN1-2图像块数据集。同时,建立了相应的实验基准,在解决现有跨光谱图像块匹配数据集较少的问题的同时,便于未来的研究。大量实验表明,所提出的FIL-Net在三种不同的跨光谱图像块匹配场景中均取得了领先的性能。