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Identifying Novel Vessel Classes with OOD Methods

机译:用ood方法识别新型船只课程

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摘要

In this paper we explore the problem of object recognition in maritime domains. In recent years, deep neural-networks have gained popularity in ship detection and classification problems, but there is little related work in applying Out-of-Distribution (OOD) methods in the maritime domain, or handling vessel classes that fall outside the training data lexicon. One major issue is the open set recognition problem of detecting unknown ships or vessels in the wild. If little or no training data exists for a rare vessel class, what level of performance can we expect from a network when it encounters these objects? In related object-classification work, deep neural networks have been shown to incorrectly classify OOD samples with high confidence. We apply OOD detection methods to synthetic overhead imagery and a deep maritime-vessel classifier to benchmark performance during rare vessel encounters, and understand how to gracefully resolve these events.
机译:在本文中,我们探讨了海上域中的对象识别问题。 近年来,深度神经网络在船舶检测和分类问题中获得了普及,但在海上域中的分销(OOD)方法或落在培训数据之外的船只类时,存在的相关工作很少 词典。 一个主要问题是在野外检测未知船舶或船只的开放式识别问题。 如果稀有船只类存在很少或没有培训数据,我们可以在遇到这些对象时从网络中预期的性能水平? 在相关对象分类工作中,深神经网络已被证明具有高信心的错误分类。 我们将检测方法应用于合成架空图像和深度海洋船舶分类器,以在稀有船舶遭遇期间进行基准性能,并了解如何优雅地解决这些事件。

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