A Joint Discriminative Generative Model for Deformable Model Construction and Classification

2017 12th IEEE International Conference on Automatic Face & Gesture Recognition (FG 2017)(2017)

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摘要
Discriminative classification models have been successfully applied for various computer vision tasks such as object and face detection and recognition. However, deformations can change objects coordinate space and perturb robust similarity measurement, which is the essence of all classification algorithms. The common approach to deal with deformations is either to seek for deformation invariant features or to develop models that describe objects deformations. However, the former approach requires a huge amount of data and a good amount of engineering to be properly trained, while the latter require considerable human effort in the form of carefully annotated data. In this paper, we propose a method that jointly learns with minimal human intervention a generative deformable model using only a simple shape model of the object and images automatically downloaded from the Internet, and also extracts features appropriate for classification. The proposed algorithm is applied on various classification problems such as “in-thewild” face recognition, gender classification and eye glasses detection on data retrieved by querying into a web image search engine. We demonstrate that not only it outperforms other automatic methods by large margins, but also performs comparably with supervised methods trained on thousands of manually annotated data.
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关键词
joint discriminative generative model,deformable model construction,discriminative classification models,computer vision,objects coordinate space,perturb robust similarity measurement,deformation invariant features,objects deformations,minimal human intervention,generative deformable model,simple shape model,Internet,feature extraction,Web image search engine
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