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Towards Multimodal Multitask Scene Understanding Models for Indoor Mobile Agents

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arxiv 2209.13156 v1 pith:WS4C6FQK submitted 2022-09-27 cs.CV cs.AI

Towards Multimodal Multitask Scene Understanding Models for Indoor Mobile Agents

classification cs.CV cs.AI
keywords indoormodelsdetectionhumanmmismobjectsceneunderstanding
verification ladder T0 review T1 audit T2 compute T3 formal T4 reserved
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The perception system in personalized mobile agents requires developing indoor scene understanding models, which can understand 3D geometries, capture objectiveness, analyze human behaviors, etc. Nonetheless, this direction has not been well-explored in comparison with models for outdoor environments (e.g., the autonomous driving system that includes pedestrian prediction, car detection, traffic sign recognition, etc.). In this paper, we first discuss the main challenge: insufficient, or even no, labeled data for real-world indoor environments, and other challenges such as fusion between heterogeneous sources of information (e.g., RGB images and Lidar point clouds), modeling relationships between a diverse set of outputs (e.g., 3D object locations, depth estimation, and human poses), and computational efficiency. Then, we describe MMISM (Multi-modality input Multi-task output Indoor Scene understanding Model) to tackle the above challenges. MMISM considers RGB images as well as sparse Lidar points as inputs and 3D object detection, depth completion, human pose estimation, and semantic segmentation as output tasks. We show that MMISM performs on par or even better than single-task models; e.g., we improve the baseline 3D object detection results by 11.7% on the benchmark ARKitScenes dataset.

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