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Main Authors: Krimmel, Markus, Achterhold, Jan, Stueckler, Joerg
Format: Preprint
Published: 2024
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Online Access:https://arxiv.org/abs/2407.04170
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author Krimmel, Markus
Achterhold, Jan
Stueckler, Joerg
author_facet Krimmel, Markus
Achterhold, Jan
Stueckler, Joerg
contents Object-centric scene decompositions are important representations for downstream tasks in fields such as computer vision and robotics. The recently proposed Slot Attention module, already leveraged by several derivative works for image segmentation and object tracking in videos, is a deep learning component which performs unsupervised object-centric scene decomposition on input images. It is based on an attention architecture, in which latent slot vectors, which hold compressed information on objects, attend to localized perceptual features from the input image. In this paper, we demonstrate that design decisions on normalizing the aggregated values in the attention architecture have considerable impact on the capabilities of Slot Attention to generalize to a higher number of slots and objects as seen during training. We propose and investigate alternatives to the original normalization scheme which increase the generalization capabilities of Slot Attention to varying slot and object counts, resulting in performance gains on the task of unsupervised image segmentation. The newly proposed normalizations represent minimal and easy to implement modifications of the usual Slot Attention module, changing the value aggregation mechanism from a weighted mean operation to a scaled weighted sum operation.
format Preprint
id arxiv_https___arxiv_org_abs_2407_04170
institution arXiv
publishDate 2024
record_format arxiv
spellingShingle Attention Normalization Impacts Cardinality Generalization in Slot Attention
Krimmel, Markus
Achterhold, Jan
Stueckler, Joerg
Computer Vision and Pattern Recognition
Object-centric scene decompositions are important representations for downstream tasks in fields such as computer vision and robotics. The recently proposed Slot Attention module, already leveraged by several derivative works for image segmentation and object tracking in videos, is a deep learning component which performs unsupervised object-centric scene decomposition on input images. It is based on an attention architecture, in which latent slot vectors, which hold compressed information on objects, attend to localized perceptual features from the input image. In this paper, we demonstrate that design decisions on normalizing the aggregated values in the attention architecture have considerable impact on the capabilities of Slot Attention to generalize to a higher number of slots and objects as seen during training. We propose and investigate alternatives to the original normalization scheme which increase the generalization capabilities of Slot Attention to varying slot and object counts, resulting in performance gains on the task of unsupervised image segmentation. The newly proposed normalizations represent minimal and easy to implement modifications of the usual Slot Attention module, changing the value aggregation mechanism from a weighted mean operation to a scaled weighted sum operation.
title Attention Normalization Impacts Cardinality Generalization in Slot Attention
topic Computer Vision and Pattern Recognition
url https://arxiv.org/abs/2407.04170