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Main Authors: Chu, KuanChao, Yamazaki, Satoshi, Nakayama, Hideki
Format: Preprint
Published: 2024
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Online Access:https://arxiv.org/abs/2406.19316
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author Chu, KuanChao
Yamazaki, Satoshi
Nakayama, Hideki
author_facet Chu, KuanChao
Yamazaki, Satoshi
Nakayama, Hideki
contents This work focuses on training dataset enhancement of informative relational triplets for Scene Graph Generation (SGG). Due to the lack of effective supervision, the current SGG model predictions perform poorly for informative relational triplets with inadequate training samples. Therefore, we propose two novel training dataset enhancement modules: Feature Space Triplet Augmentation (FSTA) and Soft Transfer. FSTA leverages a feature generator trained to generate representations of an object in relational triplets. The biased prediction based sampling in FSTA efficiently augments artificial triplets focusing on the challenging ones. In addition, we introduce Soft Transfer, which assigns soft predicate labels to general relational triplets to make more supervisions for informative predicate classes effectively. Experimental results show that integrating FSTA and Soft Transfer achieve high levels of both Recall and mean Recall in Visual Genome dataset. The mean of Recall and mean Recall is the highest among all the existing model-agnostic methods.
format Preprint
id arxiv_https___arxiv_org_abs_2406_19316
institution arXiv
publishDate 2024
record_format arxiv
spellingShingle Enhanced Data Transfer Cooperating with Artificial Triplets for Scene Graph Generation
Chu, KuanChao
Yamazaki, Satoshi
Nakayama, Hideki
Computer Vision and Pattern Recognition
This work focuses on training dataset enhancement of informative relational triplets for Scene Graph Generation (SGG). Due to the lack of effective supervision, the current SGG model predictions perform poorly for informative relational triplets with inadequate training samples. Therefore, we propose two novel training dataset enhancement modules: Feature Space Triplet Augmentation (FSTA) and Soft Transfer. FSTA leverages a feature generator trained to generate representations of an object in relational triplets. The biased prediction based sampling in FSTA efficiently augments artificial triplets focusing on the challenging ones. In addition, we introduce Soft Transfer, which assigns soft predicate labels to general relational triplets to make more supervisions for informative predicate classes effectively. Experimental results show that integrating FSTA and Soft Transfer achieve high levels of both Recall and mean Recall in Visual Genome dataset. The mean of Recall and mean Recall is the highest among all the existing model-agnostic methods.
title Enhanced Data Transfer Cooperating with Artificial Triplets for Scene Graph Generation
topic Computer Vision and Pattern Recognition
url https://arxiv.org/abs/2406.19316