Robust maritime obstacle detection is essential for fully autonomous unmanned surface vehicles (USVs). The currently widely adopted segmentation-based obstacle detection methods are prone to misclassification of object reflections and sun glitter as obstacles, producing many false positive detections, effectively rendering the methods impractical for USV navigation. However, water-turbulence-induced temporal appearance changes on object reflections are very distinctive from the appearance dynamics of true objects. We harness this property to design WaSR-T, a novel maritime obstacle detection network, that extracts the temporal context from a sequence of recent frames to reduce ambiguity. By learning the local temporal characteristics of object reflection on the water surface, WaSR-T substantially improves obstacle detection accuracy in the presence of reflections and glitter. Compared with existing single-frame methods, WaSR-T reduces the number of false positive detections by 41% overall and by over 53% within the danger zone of the boat, while preserving a high recall, and achieving new state-of-the-art performance on the challenging MODS maritime obstacle detection benchmark. The code, pretrained models and extended datasets are available at https://github.com/lojzezust/WaSR-T
翻译:对完全自主的无人驾驶潜水器(USVs)来说,探测海上强力障碍十分必要。目前广泛采用的基于分割障碍的探测方法容易将物体反射和太阳光亮误分类为障碍,产生许多虚假的正面探测,使USV导航方法不切实际。然而,物体反射由水力引起的时间外观变化与真实物体的外观动态非常不同。我们利用这一特性设计了WaSR-T,这是一个全新的海洋障碍探测网络,从最近的一系列框架中提取了时间背景,以减少模糊性。通过了解水表面物体反射的当地时间特征,WaSR-T大大提高了在反射和光亮点出现时的探测障碍准确性。与现有的单一框架方法相比,WaSR-T将虚假阳性探测数量总体减少41%,在船只危险区内减少53%以上,同时保持高度的回溯,并在具有挑战性的MSDS海洋障碍探测基准上实现新的状态性表现。http://github/SR.