Find What You Want: Learning Demand-conditioned Object Attribute Space for Demand-driven Navigation
Hongcheng Wang, Andy Guan Hong Chen, Xiaoqi Li, Mingdong Wu, Hao Dong

TL;DR
This paper introduces Demand-driven Navigation (DDN), a novel approach that leverages user demand and attribute features from language models and CLIP to improve object navigation in scenes, relaxing the need for predefined object categories.
Contribution
The paper proposes a demand-driven navigation framework that uses textual and visual attribute features to enable flexible object search based on user demand, rather than fixed object categories.
Findings
Visual attribute features improve navigation performance.
DDN outperforms baseline methods in experiments.
Leveraging language models enhances attribute understanding.
Abstract
The task of Visual Object Navigation (VON) involves an agent's ability to locate a particular object within a given scene. In order to successfully accomplish the VON task, two essential conditions must be fulfilled:1) the user must know the name of the desired object; and 2) the user-specified object must actually be present within the scene. To meet these conditions, a simulator can incorporate pre-defined object names and positions into the metadata of the scene. However, in real-world scenarios, it is often challenging to ensure that these conditions are always met. Human in an unfamiliar environment may not know which objects are present in the scene, or they may mistakenly specify an object that is not actually present. Nevertheless, despite these challenges, human may still have a demand for an object, which could potentially be fulfilled by other objects present within the scene…
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Taxonomy
TopicsMultimodal Machine Learning Applications · Advanced Image and Video Retrieval Techniques · Domain Adaptation and Few-Shot Learning
