MMOct 10, 2018

Temporal Cross-Media Retrieval with Soft-Smoothing

arXiv:1810.04547v14 citations
Originality Incremental advance
AI Analysis

This work addresses the need for improved retrieval in dynamic multimedia and social-media contexts, though it is incremental by building on existing cross-media methods.

The paper tackled the problem of cross-media retrieval by incorporating temporal correlations between visual and textual modalities, resulting in a method that outperformed baselines on three datasets.

Multimedia information have strong temporal correlations that shape the way modalities co-occur over time. In this paper we study the dynamic nature of multimedia and social-media information, where the temporal dimension emerges as a strong source of evidence for learning the temporal correlations across visual and textual modalities. So far, cross-media retrieval models, explored the correlations between different modalities (e.g. text and image) to learn a common subspace, in which semantically similar instances lie in the same neighbourhood. Building on such knowledge, we propose a novel temporal cross-media neural architecture, that departs from standard cross-media methods, by explicitly accounting for the temporal dimension through temporal subspace learning. The model is softly-constrained with temporal and inter-modality constraints that guide the new subspace learning task by favouring temporal correlations between semantically similar and temporally close instances. Experiments on three distinct datasets show that accounting for time turns out to be important for cross-media retrieval. Namely, the proposed method outperforms a set of baselines on the task of temporal cross-media retrieval, demonstrating its effectiveness for performing temporal subspace learning.

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