Supplementary Material: Deep Adaptive Image Clustering

نویسندگان

  • Jianlong Chang
  • Lingfeng Wang
  • Gaofeng Meng
  • Shiming Xiang
  • Chunhong Pan
چکیده

This is the supplementary material for the paper entitled “Deep Adaptive Image Clustering”. The supplementary material is organized as follows. Section 1 gives the mapping function described in Figure 1. Section 2 presents the proof of Theorem 1. Section 3 details the experimental settings in our experiments. 1. The Mapping Function Utilized in Figure 1 We assume that li represents the label feature of xi learned by DAC. Formally, the mapping function utilized in Figure 1 can be mathematically described as follows:

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تاریخ انتشار 2017