A Bottom-Up Clustering Approach to Unsupervised Person Re-Identification
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Lin, Yutian
Dong, Xuanyi
Zheng, Liang
Yan, Yan
Yang, Yi
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American Association for Artificial Intelligence (AAAI) Press
Abstract
Most person re-identification (re-ID) approaches are based
on supervised learning, which requires intensive manual annotation
for training data. However, it is not only resourceintensive
to acquire identity annotation but also impractical
to label the large-scale real-world data. To relieve this problem,
we propose a bottom-up clustering (BUC) approach to
jointly optimize a convolutional neural network (CNN) and
the relationship among the individual samples. Our algorithm
considers two fundamental facts in the re-ID task, i.e., diversity
across different identities and similarity within the same
identity. Specifically, our algorithm starts with regarding individual
sample as a different identity, which maximizes the
diversity over each identity. Then it gradually groups similar
samples into one identity, which increases the similarity
within each identity. We utilizes a diversity regularization
term in the bottom-up clustering procedure to balance
the data volume of each cluster. Finally, the model achieves
an effective trade-off between the diversity and similarity. We
conduct extensive experiments on the large-scale image and
video re-ID datasets, including Market-1501, DukeMTMCreID,
MARS and DukeMTMC-VideoReID. The experimental
results demonstrate that our algorithm is not only superior
to state-of-the-art unsupervised re-ID approaches, but
also performs favorably than competing transfer learning and
semi-supervised learning methods.
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Proceedings of the 33rd AAAI Conference on Artificial Intelligence
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Restricted until
2099-12-31
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