Resource Aware Person Re-identification across Multiple Resolutions

Not all people are equally easy to identify: color statistics might be enough for some cases while others might require careful reasoning about high- and low-level details. However, prevailing person re-identification(re-ID) methods use one-size-fits-all high-level embeddings from deep convolutional networks for all cases. This might limit their accuracy on difficult examples or makes them needlessly expensive for the easy ones. To remedy this, we present a new person re-ID model that combines effective embeddings built on multiple convolutional network layers, trained with deep-supervision. On traditional re-ID benchmarks, our method improves substantially over the previous state-of-the-art results on all five datasets that we evaluate on. We then propose two new formulations of the person re-ID problem under resource-constraints, and show how our model can be used to effectively trade off accuracy and computation in the presence of resource constraints. Code and pre-trained models are available at https://github.com/mileyan/DARENet.

PDF Abstract CVPR 2018 PDF CVPR 2018 Abstract
Task Dataset Model Metric Name Metric Value Global Rank Result Benchmark
Person Re-Identification CUHK03 detected DaRe+RE (CVPR'18) MAP 59.0 # 12
Rank-1 63.3 # 12
Person Re-Identification CUHK03 labeled DaRe+RE (CVPR'18) MAP 61.6 # 14
Rank-1 66.1 # 14
Person Re-Identification DukeMTMC-reID DaRe(De)+RE+RR [wang2018resource] Rank-1 84.4 # 57
mAP 80.0 # 40
Person Re-Identification Market-1501 DaRe(De)+RE+RR [wang2018resource] Rank-1 90.9 # 79
mAP 86.7 # 69

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