CVJul 26, 2016

Semantic Clustering for Robust Fine-Grained Scene Recognition

arXiv:1607.07614v114 citations
Originality Incremental advance
AI Analysis

This addresses robust scene recognition across domains for applications like autonomous driving or surveillance, but it appears incremental as it builds on existing domain generalization methods.

The authors tackled domain generalization for fine-grained scene recognition by proposing a semantic scene descriptor and clustering approach, achieving state-of-the-art performance on a new dataset and benchmarks.

In domain generalization, the knowledge learnt from one or multiple source domains is transferred to an unseen target domain. In this work, we propose a novel domain generalization approach for fine-grained scene recognition. We first propose a semantic scene descriptor that jointly captures the subtle differences between fine-grained scenes, while being robust to varying object configurations across domains. We model the occurrence patterns of objects in scenes, capturing the informativeness and discriminability of each object for each scene. We then transform such occurrences into scene probabilities for each scene image. Second, we argue that scene images belong to hidden semantic topics that can be discovered by clustering our semantic descriptors. To evaluate the proposed method, we propose a new fine-grained scene dataset in cross-domain settings. Extensive experiments on the proposed dataset and three benchmark scene datasets show the effectiveness of the proposed approach for fine-grained scene transfer, where we outperform state-of-the-art scene recognition and domain generalization methods.

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