Notes from Memisevic – Learning to Relate Images

Notes from Memisevic – Learning to Relate Images

Annotations, Dissertation, General, Research
Citation Memisevic, Roland. “Learning to Relate Images.” IEEE Transactions on Pattern Analysis and Machine Intelligence 35, no. 8 (2013): 1829–1846. doi:10.1109/TPAMI.2013.53. Abstract A fundamental operation in many vision tasks, including motion understanding, stereopsis, visual odometry, or invariant recognition, is establishing correspondences between images or between images and data from other modalities. Recently, there has been increasing interest in learning to infer correspondences from data using relational, spatiotemporal, and bilinear variants of deep learning methods. These methods use multiplicative interactions between pixels or between features to represent correlation patterns across multiple images. In this paper, we review the recent work on relational feature learning, and we provide an analysis of the role that multiplicative interactions play in learning to encode relations. We also discuss how square-pooling and complex cell models can…
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