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BORM: Bayesian Object Relation Model for Indoor Scene Recognition

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arxiv 2108.00397 v1 pith:5NTY7LJ7 submitted 2021-08-01 cs.CV cs.RO

BORM: Bayesian Object Relation Model for Indoor Scene Recognition

classification cs.CV cs.RO
keywords objectscenemodelrecognitionbayesianbormdatasetindoor
verification ladder T0 review T1 audit T2 compute T3 formal T4 reserved
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Scene recognition is a fundamental task in robotic perception. For human beings, scene recognition is reasonable because they have abundant object knowledge of the real world. The idea of transferring prior object knowledge from humans to scene recognition is significant but still less exploited. In this paper, we propose to utilize meaningful object representations for indoor scene representation. First, we utilize an improved object model (IOM) as a baseline that enriches the object knowledge by introducing a scene parsing algorithm pretrained on the ADE20K dataset with rich object categories related to the indoor scene. To analyze the object co-occurrences and pairwise object relations, we formulate the IOM from a Bayesian perspective as the Bayesian object relation model (BORM). Meanwhile, we incorporate the proposed BORM with the PlacesCNN model as the combined Bayesian object relation model (CBORM) for scene recognition and significantly outperforms the state-of-the-art methods on the reduced Places365 dataset, and SUN RGB-D dataset without retraining, showing the excellent generalization ability of the proposed method. Code can be found at https://github.com/hszhoushen/borm.

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