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Main Authors: Konstantinidis, Dimitrios, Papastratis, Ilias, Dimitropoulos, Kosmas, Daras, Petros
Format: Preprint
Published: 2022
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Online Access:https://arxiv.org/abs/2207.08569
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author Konstantinidis, Dimitrios
Papastratis, Ilias
Dimitropoulos, Kosmas
Daras, Petros
author_facet Konstantinidis, Dimitrios
Papastratis, Ilias
Dimitropoulos, Kosmas
Daras, Petros
contents Vision Transformers are very popular nowadays due to their state-of-the-art performance in several computer vision tasks, such as image classification and action recognition. Although their performance has been greatly enhanced through highly descriptive patch embeddings and hierarchical structures, there is still limited research on utilizing additional data representations so as to refine the selfattention map of a Transformer. To address this problem, a novel attention mechanism, called multi-manifold multihead attention, is proposed in this work to substitute the vanilla self-attention of a Transformer. The proposed mechanism models the input space in three distinct manifolds, namely Euclidean, Symmetric Positive Definite and Grassmann, thus leveraging different statistical and geometrical properties of the input for the computation of a highly descriptive attention map. In this way, the proposed attention mechanism can guide a Vision Transformer to become more attentive towards important appearance, color and texture features of an image, leading to improved classification and segmentation results, as shown by the experimental results on well-known datasets.
format Preprint
id arxiv_https___arxiv_org_abs_2207_08569
institution arXiv
publishDate 2022
record_format arxiv
spellingShingle Multi-manifold Attention for Vision Transformers
Konstantinidis, Dimitrios
Papastratis, Ilias
Dimitropoulos, Kosmas
Daras, Petros
Computer Vision and Pattern Recognition
Vision Transformers are very popular nowadays due to their state-of-the-art performance in several computer vision tasks, such as image classification and action recognition. Although their performance has been greatly enhanced through highly descriptive patch embeddings and hierarchical structures, there is still limited research on utilizing additional data representations so as to refine the selfattention map of a Transformer. To address this problem, a novel attention mechanism, called multi-manifold multihead attention, is proposed in this work to substitute the vanilla self-attention of a Transformer. The proposed mechanism models the input space in three distinct manifolds, namely Euclidean, Symmetric Positive Definite and Grassmann, thus leveraging different statistical and geometrical properties of the input for the computation of a highly descriptive attention map. In this way, the proposed attention mechanism can guide a Vision Transformer to become more attentive towards important appearance, color and texture features of an image, leading to improved classification and segmentation results, as shown by the experimental results on well-known datasets.
title Multi-manifold Attention for Vision Transformers
topic Computer Vision and Pattern Recognition
url https://arxiv.org/abs/2207.08569