Self-Supervised Representation Learning for Content Based Image Retrieval of Complex Scenes

Hariprasath Govindarajan, P. Lindskog, Dennis Lundström, Amanda Olmin, Jacob Roll, F. Lindsten
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引用次数: 1

Abstract

Although Content Based Image Retrieval (CBIR) is an active research field, application to images simultaneously containing multiple objects has received limited research inter- est. For such complex images, it is difficult to precisely convey the query intention, to encode all the image aspects into one compact global feature representation and to unambiguously define label similarity or dissimilarity. Motivated by the recent success on many visual benchmark tasks, we propose a self- supervised method to train a feature representation learning model. We propose usage of multiple query images, and use an attention based architecture to extract features from diverse image aspects that benefits from this. The method shows promising performance on road scene datasets, and, consistently improves when multiple query images are used instead of a single query image.
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基于内容的复杂场景图像检索的自监督表示学习
尽管基于内容的图像检索(CBIR)是一个活跃的研究领域,但将其应用于同时包含多个对象的图像却受到了有限的研究兴趣,对于这种复杂的图像,很难准确地传达查询意图,将图像的所有方面编码为一个紧凑的全局特征表示,并且难以明确地定义标签的相似性或不相似性。受最近在许多视觉基准任务上取得成功的启发,我们提出了一种自监督方法来训练特征表示学习模型。我们建议使用多个查询图像,并使用基于注意力的架构从不同的图像方面提取特征,从而受益于此。该方法在道路场景数据集上显示出良好的性能,并且在使用多个查询图像而不是单个查询图像时持续提高。
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