CVAIMar 22, 2022

Fine-Grained Scene Graph Generation with Data Transfer

arXiv:2203.11654v2117 citationsh-index: 98Has Code
Originality Incremental advance
AI Analysis

This addresses a data distribution issue in scene graph generation for high-level vision and language understanding, representing an incremental improvement.

The paper tackles the problem of scene graph generation models collapsing to frequent but uninformative predicates due to long-tail distribution and semantic ambiguity, proposing a plug-and-play data transfer method that doubles macro performance while maintaining competitive micro performance.

Scene graph generation (SGG) is designed to extract (subject, predicate, object) triplets in images. Recent works have made a steady progress on SGG, and provide useful tools for high-level vision and language understanding. However, due to the data distribution problems including long-tail distribution and semantic ambiguity, the predictions of current SGG models tend to collapse to several frequent but uninformative predicates (e.g., on, at), which limits practical application of these models in downstream tasks. To deal with the problems above, we propose a novel Internal and External Data Transfer (IETrans) method, which can be applied in a plug-and-play fashion and expanded to large SGG with 1,807 predicate classes. Our IETrans tries to relieve the data distribution problem by automatically creating an enhanced dataset that provides more sufficient and coherent annotations for all predicates. By training on the enhanced dataset, a Neural Motif model doubles the macro performance while maintaining competitive micro performance. The code and data are publicly available at https://github.com/waxnkw/IETrans-SGG.pytorch.

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