Enhancing the detection of concepts for visual lifelogs using contexts instead of ontologies

Peng Wang, A. Smeaton, Yuchao Zhang, Bo Deng
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引用次数: 4

Abstract

Automatic detection of semantic concepts in visual media is typically achieved by an automatic mapping from low-level features to higher level semantics and progress in automatic detection within narrow domains has now reached a satisfactory performance level. In visual lifelogging, part of the quantified-self movement, wearable cameras can automatically record most aspects of daily living. The resulting images have a diversity of everyday concepts which severely degrades the performance of concept detection. In this paper, we present an algorithm based on non-negative matrix refactorization which exploits inherent relationships between everyday concepts in domains where context is more prevalent, such as lifelogging. Results for initial concept detection are factorized and adjusted according to their patterns of appearance, and absence. In comparison to using an ontology to enhance concept detection, we use underlying contextual semantics to improve overall detection performance. Results are demonstrated in experiments to show the efficacy of our algorithm.
使用上下文而不是本体增强视觉生命日志的概念检测
视觉媒体中语义概念的自动检测通常是通过从低级特征到高级语义的自动映射来实现的,目前在窄域内的自动检测已经达到了令人满意的性能水平。视觉生活记录是量化自我运动的一部分,可穿戴相机可以自动记录日常生活的大部分方面。产生的图像具有日常概念的多样性,这严重降低了概念检测的性能。在本文中,我们提出了一种基于非负矩阵重构的算法,该算法利用了上下文更普遍的领域(如生活日志)中日常概念之间的内在关系。对初始概念检测的结果进行因式分解,并根据其出现和不存在的模式进行调整。与使用本体来增强概念检测相比,我们使用底层上下文语义来提高整体检测性能。实验结果表明了算法的有效性。
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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