4.6 Article

Unsupervised Person Re-identification: Clustering and Fine-tuning

Publisher

ASSOC COMPUTING MACHINERY
DOI: 10.1145/3243316

Keywords

Large-scale person re-identification; unsupervised learning; convolutional neural network; clustering

Funding

  1. National Nature Science Foundation of China [61671196, 61525206, 61701149]
  2. Zhejiang Province Nature Science Foundation of China [LR17F030006]
  3. National Key Research and Development Program of China [2017YFC0820600]
  4. 111 Project [D17019]
  5. Data to Decisions CRC (D2D CRC)
  6. Cooperative Research Centres Programme
  7. SIEF STEM+ Business fellowship

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The superiority of deeply learned pedestrian representations has been reported in very recent literature of person re-identification (re-ID). In this article, we consider the more pragmatic issue of learning a deep feature with no or only a few labels. We propose a progressive unsupervised learning (PUL) method to transfer pretrained deep representations to unseen domains. Our method is easy to implement and can be viewed as an effective baseline for unsupervised re-ID feature learning. Specifically, PUL iterates between (1) pedestrian clustering and (2) fine-tuning of the convolutional neural network (CNN) to improve the initialization model trained on the irrelevant labeled dataset. Since the clustering results can be very noisy, we add a selection operation between the clustering and fine-tuning. At the beginning, when the model is weak, CNN is fine-tuned on a small amount of reliable examples that locate near to cluster centroids in the feature space. As the model becomes stronger, in subsequent iterations, more images are being adaptively selected as CNN training samples. Progressively, pedestrian clustering and the CNN model are improved simultaneously until algorithm convergence. This process is naturally formulated as self-paced learning. We then point out promising directions that may lead to further improvement. Extensive experiments on three large-scale re-ID datasets demonstrate that PUL outputs discriminative features that improve the re-ID accuracy. Our code has been released at https://github.com/hehefan/Unsupervised- Person- Re- identification- Clustering- and- Fine- tuning.

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