Event Recognition in Photo Collections with a Stopwatch HMM

Lukas Bossard, M. Guillaumin, L. Gool
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引用次数: 49

Abstract

The task of recognizing events in photo collections is central for automatically organizing images. It is also very challenging, because of the ambiguity of photos across different event classes and because many photos do not convey enough relevant information. Unfortunately, the field still lacks standard evaluation data sets to allow comparison of different approaches. In this paper, we introduce and release a novel data set of personal photo collections containing more than 61,000 images in 807 collections, annotated with 14 diverse social event classes. Casting collections as sequential data, we build upon recent and state-of-the-art work in event recognition in videos to propose a latent sub-event approach for event recognition in photo collections. However, photos in collections are sparsely sampled over time and come in bursts from which transpires the importance of specific moments for the photographers. Thus, we adapt a discriminative hidden Markov model to allow the transitions between states to be a function of the time gap between consecutive images, which we coin as Stopwatch Hidden Markov model (SHMM). In our experiments, we show that our proposed model outperforms approaches based only on feature pooling or a classical hidden Markov model. With an average accuracy of 56%, we also highlight the difficulty of the data set and the need for future advances in event recognition in photo collections.
带有秒表的照片集合中的事件识别
识别照片集中的事件是自动组织图像的核心任务。这也是非常具有挑战性的,因为不同事件类别的照片具有模糊性,而且许多照片没有传达足够的相关信息。不幸的是,该领域仍然缺乏标准的评估数据集来比较不同的方法。在本文中,我们介绍并发布了一个新的个人照片集合数据集,其中包含807个集合中的61,000多张图像,并注释了14个不同的社会事件类别。将集合作为顺序数据,我们基于最近和最先进的视频事件识别工作,提出了一种用于照片集合事件识别的潜在子事件方法。然而,随着时间的推移,收藏中的照片是稀疏采样的,并且是突发的,从中可以看出特定时刻对摄影师的重要性。因此,我们采用了一种判别式隐马尔可夫模型,使状态之间的转换成为连续图像之间时间间隔的函数,我们称之为秒表隐马尔可夫模型(SHMM)。在我们的实验中,我们表明我们提出的模型优于仅基于特征池或经典隐马尔可夫模型的方法。平均准确率为56%,我们还强调了数据集的难度以及未来在照片集中事件识别方面的需求。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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