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Recognizing Families In the Wild: White Paper for the 4th Edition Data Challenge

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arxiv 2002.06303 v3 pith:NQTET52H submitted 2020-02-15 cs.CV

Recognizing Families In the Wild: White Paper for the 4th Edition Data Challenge

classification cs.CV
keywords challengerfiwautomaticdataevaluationfamilieskinshiprecognition
verification ladder T0 review T1 audit T2 compute T3 formal T4 reserved
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Recognizing Families In the Wild (RFIW): an annual large-scale, multi-track automatic kinship recognition evaluation that supports various visual kin-based problems on scales much higher than ever before. Organized in conjunction with the 15th IEEE International Conference on Automatic Face and Gesture Recognition (FG) as a Challenge, RFIW provides a platform for publishing original work and the gathering of experts for a discussion of the next steps. This paper summarizes the supported tasks (i.e., kinship verification, tri-subject verification, and search & retrieval of missing children) in the evaluation protocols, which include the practical motivation, technical background, data splits, metrics, and benchmark results. Furthermore, top submissions (i.e., leader-board stats) are listed and reviewed as a high-level analysis on the state of the problem. In the end, the purpose of this paper is to describe the 2020 RFIW challenge, end-to-end, along with forecasts in promising future directions.

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