资源论文Sequential Person Recognition in Photo Albums with a Recurrent Network

Sequential Person Recognition in Photo Albums with a Recurrent Network

2019-12-05 | |  32 |   31 |   0

Abstract

Recognizing the identities of people in everyday photos is still a very challenging problem for machine vision, due to issues such as non-frontal faces, changes in clothing, location and lighting. Recent studies have shown that rich relational information between people in the same photo can help in recognizing their identities. In this work, we propose to model the relational information between people as a sequence prediction task. At the core of our work is a novel recurrent network architecture, in which relational information between instanceslabels and appearance are modeled jointly. In addition to relational cues, scene context is incorporated in our sequence prediction model with no additional cost. In this sense, our approach is a unifified framework for modeling both contextual cues and visual appearance of person instances. Our model is trained endto-end with a sequence of annotated instances in a photo as inputs, and a sequence of corresponding labels as targets. We demonstrate that this simple but elegant formulation achieves state-of-the-art performance on the newly released People In Photo Albums (PIPA) dataset

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