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Aggregating Deep Pyramidal Representations for Person Re-Idenfitication
{Christian Micheloni Niki Martinel Gian Luca Foresti}

Abstract
Learning discriminative, view-invariant and multi-scale representations of person appearance with different se- mantic levels is of paramount importance for person Re- Identification (Re-ID). A surge of effort has been spent by the community to learn deep Re-ID models capturing a holistic single semantic level feature representation. To improve the achieved results, additional visual attributes and body part-driven models have been considered. How- ever, these require extensive human annotation labor or de- mand additional computational efforts. We argue that a pyramid-inspired method capturing multi-scale information may overcome such requirements. Precisely, multi-scale stripes that represent visual information of a person can be used by a novel architecture factorizing them into latent discriminative factors at multiple semantic levels. A multi- task loss is combined with a curriculum learning strategy to learn a discriminative and invariant person representation which is exploited for triplet-similarity learning. Results on three benchmark Re-ID datasets demonstrate that better performance than existing methods are achieved (e.g., more than 90% accuracy on the Duke-MTMC dataset).
Benchmarks
| Benchmark | Methodology | Metrics |
|---|---|---|
| person-re-identification-on-dukemtmc-reid | PyrNet (+ReRank) | Rank-1: 90.3 mAP: 87.7 |
| person-re-identification-on-dukemtmc-reid | PyrNet | Rank-1: 87.1 mAP: 74.0 |
| person-re-identification-on-market-1501 | PyrNet (single-shot) | Rank-1: 93.6 mAP: 81.7 |
| person-re-identification-on-market-1501 | PyrNet (single-shot+ReRank) | Rank-1: 94.6 mAP: 91.4 |
| person-re-identification-on-market-1501 | PyrNet (multi-shot) | Rank-1: 95.2 mAP: 86.7 |
| person-re-identification-on-market-1501 | PyrNet (multi-shot+ReRank) | Rank-1: 96.1 mAP: 94.0 |
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