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F-Siamese Tracker: A Frustum-based Double Siamese Network for 3D Single Object Tracking

机译:F-SIAMESE跟踪器:3D单对象跟踪的基于截图的双暹罗网络

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This paper presents F-Siamese Tracker, a novel approach for single object tracking prominently characterized by more robustly integrating 2D and 3D information to reduce redundant search space. A main challenge in 3D single object tracking is how to reduce search space for generating appropriate 3D candidates. Instead of solely relying on 3D proposals, firstly, our method leverages the Siamese network applied on RGB images to produce 2D region proposals which are then extruded into 3D viewing frustums. Besides, we perform an on-line accuracy validation on the 3D frustum to generate refined point cloud searching space, which can be embedded directly into the existing 3D tracking backbone. For efficiency, our approach gains better performance with fewer candidates by reducing search space. In addition, benefited from introducing the online accuracy validation, for occasional cases with strong occlusions or very sparse points, our approach can still achieve high precision, even when the 2D Siamese tracker loses the target. This approach allows us to set a new state-of-the-art in 3D single object tracking by a significant margin on a sparse outdoor dataset (KITTI tracking). Moreover, experiments on 2D single object tracking show that our framework boosts 2D tracking performance as well.
机译:本文介绍了F-SIAMESE跟踪器,一种新的单一对象跟踪的方法,其突出地表征了更加强大地集成了2D和3D信息以减少冗余搜索空间。 3D单个对象跟踪中的主要挑战是如何降低用于生成适当的3D候选的搜索空间。而不是仅仅依靠3D提案,我们的方法利用暹罗网络应用于RGB图像以产生2D区域提案,然后将其挤出到3D观看截头中。此外,我们在3D截端上执行一条在线精度验证,以生成精细点云搜索空间,可以将其直接嵌入到现有的3D跟踪骨干中。为了效率,通过减少搜索空间,我们的方法可以利用更少的候选者提高性能。此外,由于偶尔造成了强大的遮挡或非常稀疏的点的偶尔病例,我们的方法仍然可以实现高精度,即使是2D暹罗跟踪器失去目标。这种方法允许我们在稀疏室外数据集(Kitti跟踪)上的一个重要边距来设置3D单个对象跟踪的新的最先进的。此外,在2D单对象跟踪上的实验表明我们的框架也能提高2D跟踪性能。

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