Two Video Data Sets for Tracking and Retrieval of Out of Distribution Objects

Kira Maag, Robin Chan, Svenja Uhlemeyer, K. Kowol, H. Gottschalk
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引用次数: 6

Abstract

In this work we present two video test data sets for the novel computer vision (CV) task of out of distribution tracking (OOD tracking). Here, OOD objects are understood as objects with a semantic class outside the semantic space of an underlying image segmentation algorithm, or an instance within the semantic space which however looks decisively different from the instances contained in the training data. OOD objects occurring on video sequences should be detected on single frames as early as possible and tracked over their time of appearance as long as possible. During the time of appearance, they should be segmented as precisely as possible. We present the SOS data set containing 20 video sequences of street scenes and more than 1000 labeled frames with up to two OOD objects. We furthermore publish the synthetic CARLA-WildLife data set that consists of 26 video sequences containing up to four OOD objects on a single frame. We propose metrics to measure the success of OOD tracking and develop a baseline algorithm that efficiently tracks the OOD objects. As an application that benefits from OOD tracking, we retrieve OOD sequences from unlabeled videos of street scenes containing OOD objects.
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两种用于非分布对象跟踪和检索的视频数据集
在这项工作中,我们提出了两个视频测试数据集,用于新的计算机视觉(CV)任务的偏离分布跟踪(OOD跟踪)。在这里,OOD对象被理解为在底层图像分割算法的语义空间之外具有语义类的对象,或者是语义空间内的实例,但看起来与训练数据中包含的实例完全不同。在视频序列中出现的OOD对象应该尽可能早地在单帧中检测到,并尽可能长时间地跟踪它们的出现时间。在出现的时候,它们应该被尽可能精确地分割。我们提出了SOS数据集,其中包含20个街景视频序列和1000多个带有最多两个OOD对象的标记帧。我们进一步发布了合成的CARLA-WildLife数据集,该数据集由26个视频序列组成,其中每帧最多包含4个OOD对象。我们提出了衡量OOD跟踪成功的指标,并开发了一个有效跟踪OOD对象的基线算法。作为一个受益于OOD跟踪的应用程序,我们从包含OOD对象的未标记街景视频中检索OOD序列。
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