Ego-Vehicle Action Recognition based on Semi-Supervised Contrastive Learning

Chihiro Noguchi, Toshihiro Tanizawa
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引用次数: 1

Abstract

In recent years, many automobiles have been equipped with cameras, which have accumulated an enormous amount of video footage of driving scenes. Autonomous driving demands the highest level of safety, for which even unimaginably rare driving scenes have to be collected in training data to improve the recognition accuracy for specific scenes. However, it is prohibitively costly to find very few specific scenes from an enormous amount of videos. In this article, we show that proper video-to-video distances can be defined by focusing on ego-vehicle actions. It is well known that existing methods based on supervised learning cannot handle videos that do not fall into predefined classes, though they work well in defining video-to-video distances in the embedding space between labeled videos. To tackle this problem, we propose a method based on semi-supervised contrastive learning. We consider two related but distinct contrastive learning: standard graph contrastive learning and our proposed SOIA-based contrastive learning. We observe that the latter approach can provide more sensible video-to-video distances between unlabeled videos. Next, the effectiveness of our method is quantified by evaluating the classification performance of the ego-vehicle action recognition using HDD dataset, which shows that our method including unlabeled data in training significantly outperforms the existing methods using only labeled data in training.
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基于半监督对比学习的自我-车辆动作识别
近年来,许多汽车都配备了摄像头,这些摄像头积累了大量的驾驶场景录像。自动驾驶对安全性的要求是最高的,即使是极其罕见的驾驶场景,也需要在训练数据中进行采集,以提高对特定场景的识别精度。然而,从大量的视频中找到很少的特定场景是非常昂贵的。在本文中,我们展示了适当的视频到视频的距离可以通过关注自我车辆的动作来定义。众所周知,现有的基于监督学习的方法不能处理不属于预定义类的视频,尽管它们在标记视频之间的嵌入空间中定义视频到视频的距离方面效果很好。为了解决这个问题,我们提出了一种基于半监督对比学习的方法。我们考虑了两种相关但不同的对比学习:标准图对比学习和我们提出的基于soa的对比学习。我们观察到后一种方法可以在未标记的视频之间提供更合理的视频到视频距离。接下来,通过评估HDD数据集的自我-车辆动作识别分类性能来量化我们方法的有效性,结果表明,我们的方法在训练中包含未标记的数据,显著优于现有的仅使用标记数据的方法。
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