View a PDF of the paper titled Semantic-guided modeling of spatial relation and object co-occurrence for indoor scene recognition, by Chuanxin Song and 2 other authors
Abstract:Exploring the semantic context in scene images is essential for indoor scene recognition. However, due to the diverse intra-class spatial layouts and the coexisting inter-class objects, modeling contextual relationships to adapt various image characteristics is a great challenge. Existing contextual modeling methods for scene recognition exhibit two limitations: 1) They typically model only one type of spatial relationship (order or metric) among objects within scenes, with limited exploration of diverse spatial layouts. 2) They often overlook the differences in coexisting objects across different scenes, suppressing scene recognition performance. To overcome these limitations, we propose SpaCoNet, which simultaneously models Spatial relation and Co-occurrence of objects guided by semantic segmentation. Firstly, the Semantic Spatial Relation Module (SSRM) is constructed to model scene spatial features. With the help of semantic segmentation, this module decouples spatial information from the scene image and thoroughly explores all spatial relationships among objects in an implicit manner, thereby obtaining semantic-based spatial features. Secondly, both spatial features from the SSRM and deep features from the Image Feature Extraction Module are allocated to each object, so as to distinguish the coexisting object across different scenes. Finally, utilizing the discriminative features above, we design a Global-Local Dependency Module to explore the long-range co-occurrence among objects, and further generate a semantic-guided feature representation for indoor scene recognition. Experimental results on three widely used scene datasets demonstrate the effectiveness and generality of the proposed method.
Submission history
From: Chuanxin Song [view email]
[v1]
Mon, 22 May 2023 03:04:22 UTC (11,617 KB)
[v2]
Wed, 1 Nov 2023 10:38:06 UTC (11,108 KB)
[v3]
Wed, 1 May 2024 13:29:25 UTC (3,900 KB)
[v4]
Wed, 7 Aug 2024 11:37:02 UTC (4,356 KB)
[v5]
Sat, 4 Jan 2025 08:23:26 UTC (4,356 KB)
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