Egocentric Video Search via Physical Interactions

Authors

  • Taiki Miyanishi Advanced Telecommunications Research Institute International
  • Jun-ichiro Hirayama Advanced Telecommunications Research Institute International
  • Quan Kong Osaka University
  • Takuya Maekawa Osaka University
  • Hiroki Moriya Advanced Telecommunications Research Institute International
  • Takayuki Suyama Advanced Telecommunications Research Institute International

DOI:

https://doi.org/10.1609/aaai.v30i1.10009

Keywords:

Memory Augmentation, Lifelog, Egocentric Video Search

Abstract

Retrieving past egocentric videos about personal daily life is important to support and augment human memory. Most previous retrieval approaches have ignored the crucial feature of human-physical world interactions, which is greatly related to our memory and experience of daily activities. In this paper, we propose a gesture-based egocentric video retrieval framework, which retrieves past visual experience using body gestures as non-verbal queries. We use a probabilistic framework based on a canonical correlation analysis that models physical interactions through a latent space and uses them for egocentric video retrieval and re-ranking search results. By incorporating physical interactions into the retrieval models, we address the problems resulting from the variability of human motions. We evaluate our proposed method on motion and egocentric video datasets about daily activities in household settings and demonstrate that our egocentric video retrieval framework robustly improves retrieval performance when retrieving past videos from personal and even other persons' video archives.

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Published

2016-02-21

How to Cite

Miyanishi, T., Hirayama, J.- ichiro, Kong, Q., Maekawa, T., Moriya, H., & Suyama, T. (2016). Egocentric Video Search via Physical Interactions. Proceedings of the AAAI Conference on Artificial Intelligence, 30(1). https://doi.org/10.1609/aaai.v30i1.10009

Issue

Section

Technical Papers: Cognitive Modeling