In recent years a vast amount of visual content has been generated and shared from many fields, such as social media platforms, medical imaging, and robotics. This abundance of content creation and sharing has introduced new challenges, particularly that of searching databases for similar content-Content Based Image Retrieval (CBIR)-a long-established research area in which improved efficiency and accuracy are needed for real-time retrieval. Artificial intelligence has made progress in CBIR and has significantly facilitated the process of instance search. In this survey we review recent instance retrieval works that are developed based on deep learning algorithms and techniques, with the survey organized by deep network architecture types, deep features, feature embedding and aggregation methods, and network fine-tuning strategies. Our survey considers a wide variety of recent methods, whereby we identify milestone work, reveal connections among various methods and present the commonly used benchmarks, evaluation results, common challenges, and propose promising future directions.
翻译:近年来,从社会媒体平台、医疗成像和机器人等许多领域产生和分享了大量的视觉内容,这种丰富的内容创建和共享带来了新的挑战,特别是寻找数据库以寻找类似的内容库基础图像检索(CBIR)——这是一个长期确立的研究领域,需要提高效率和准确性,以便实时检索;人工情报在CBIR方面取得了进展,大大促进了实例搜索进程;在这项调查中,我们审查了最近根据深层次学习算法和技术开发的检索工作,调查由深层网络结构类型、深层特征、特征嵌入和汇总方法以及网络微调战略等组织。我们的调查考虑了广泛的近期方法,通过这些方法,我们确定了里程碑式的工作,揭示了各种方法之间的联系,并介绍了共同使用的基准、评价结果、共同挑战,并提出了有希望的未来方向。