Salient object detection in complex scenes and environments is a challenging research topic. Most works focus on RGB-based salient object detection, which limits its performance of real-life applications when confronted with adverse conditions such as dark environments and complex backgrounds. Taking advantage of RGB and thermal infrared images becomes a new research direction for detecting salient object in complex scenes recently, as thermal infrared spectrum imaging provides the complementary information and has been applied to many computer vision tasks. However, current research for RGBT salient object detection is limited by the lack of a large-scale dataset and comprehensive benchmark. This work contributes such a RGBT image dataset named VT5000, including 5000 spatially aligned RGBT image pairs with ground truth annotations. VT5000 has 11 challenges collected in different scenes and environments for exploring the robustness of algorithms. With this dataset, we propose a powerful baseline approach, which extracts multi-level features within each modality and aggregates these features of all modalities with the attention mechanism, for accurate RGBT salient object detection. Extensive experiments show that the proposed baseline approach outperforms the state-of-the-art methods on VT5000 dataset and other two public datasets. In addition, we carry out a comprehensive analysis of different algorithms of RGBT salient object detection on VT5000 dataset, and then make several valuable conclusions and provide some potential research directions for RGBT salient object detection.
翻译:在复杂的场景和环境中,显要天体探测是一个具有挑战性的研究课题。大多数工作的重点是基于RGB的显要天体探测,这限制了其在面对黑暗环境和复杂背景等不利条件时实际应用的性能。利用RGB和热红红外图像最近成为在复杂场景中探测突出天体的新研究方向,因为热红红外线谱成像提供了补充信息,并应用于许多计算机的视觉任务。然而,目前对RGBT突出天体探测的研究由于缺乏大规模数据集和综合基准而受到限制。这项工作促成了一个名为VT500的RGBT图像数据集,包括5000个空间上对齐的RGBT图像配对和地面真相说明。VT500在不同的场景和环境中收集了11项挑战,以探索算法的稳健性。我们提出了强有力的基线方法,在每种模式中提取多层次特征,并将所有模式的这些特征与关注机制结合起来,用于准确的RGBT突出天体探测。广泛的实验表明,拟议的基线方法超越了州-目标目标的V500级目标,同时增加了两个R-G-GT的显地点探测数据方向。