首页|Constrained mutual convex cone method for image set based recognition

Constrained mutual convex cone method for image set based recognition

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In this paper, we propose convex cone-based frameworks for image-set classification. Image-set classification aims to classify a set of images, usually obtained from video frames or multi-view cameras, into a target object. To accurately and stably classify a set, it is essential to accurately represent structural information of the set. There are various image features, such as histogram-based features and convolutional neural network features. We should note that most of them have non-negativity and thus can be effectively represented by a convex cone. This leads us to introduce the convex cone representation to image-set classification. To establish a convex cone-based framework, we mathematically define multiple angles between two convex cones, and then use the angles to define the geometric similarity between them. Moreover, to enhance the framework, we introduce two discriminant spaces. We first propose a discriminant space that maximizes gaps between cones and minimizes the within-class variance. We then extend it to a weighted discriminant space by introducing weights on the gaps to deal with complicated data distribution. In addition, to reduce the computational cost of the proposed methods, we develop a novel strategy for fast implementation. The effectiveness of the proposed methods is demonstrated experimentally by using five databases. (c) 2021 Elsevier Ltd. All rights reserved.

Image-set based methodConvex cone representationMultiple anglesFACE RECOGNITIONLEAST-SQUARESOBJECT

Sogi, Naoya、Zhu, Rui、Xue, Jing-Hao、Fukui, Kazuhiro

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Univ Tsukuba

City Univ London

UCL

2022

Pattern Recognition

Pattern Recognition

EISCI
ISSN:0031-3203
年,卷(期):2022.121
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