Paper
15 March 2019 Unsupervised similarity learning from compressed representations via Siamese autoencoders
Author Affiliations +
Proceedings Volume 11041, Eleventh International Conference on Machine Vision (ICMV 2018); 110412F (2019) https://doi.org/10.1117/12.2522920
Event: Eleventh International Conference on Machine Vision (ICMV 2018), 2018, Munich, Germany
Abstract
Many domain specific challenges for feature matching and similarity learning in computer vision have been relying on labelled data, either using heuristic or more recent approaches via deep learning. While aiming for precise solutions, we need to process larger number of features which may result in higher computational complexity. This paper proposes a novel method of similarity learning through two-part cost function as it could be done using heuristic approaches in original feature space in an unsupervised manner, while also reducing feature complexity. The features are encoded on the lower dimensionality manifold which preserve original structure of data. This approach takes advantage of siamese networks and autoencoders to obtain compressed features while maintaining same distance properties as in the original feature space. This is done by introducing new loss function with two terms, which aims for good reconstruction as well as learning the similar data point neighborhood from encoded and reconstructed feature space.
© (2019) COPYRIGHT Society of Photo-Optical Instrumentation Engineers (SPIE). Downloading of the abstract is permitted for personal use only.
Marek Jakab and Wanda Benesova "Unsupervised similarity learning from compressed representations via Siamese autoencoders", Proc. SPIE 11041, Eleventh International Conference on Machine Vision (ICMV 2018), 110412F (15 March 2019); https://doi.org/10.1117/12.2522920
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Cited by 1 scholarly publication.
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KEYWORDS
Computer programming

Principal component analysis

Feature extraction

Image processing

Computer vision technology

Data processing

Machine vision

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