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VLM 시대의 목표 객체 탐색을 위한 지식 융합 전략 서베이
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Title
VLM 시대의 목표 객체 탐색을 위한 지식 융합 전략 서베이
Alternative Title
Where to Fuse in the VLM Era: A Survey on Integrating Knowledge into Object Goal Navigation
Issued Date
2026-01
Citation
Transactions of the Korean Society of Automotive Engineers, v.34, no.1, pp.119 - 131
Type
Article
Author Keywords
실내탐색비전언어모델거대언어모델목표객체탐색Indoor navigationVision language modelLarge language modelObject goal navigation
ISSN
1225-6382
Abstract

The rapid advancement of robotics and deep learning has increasingly accelerated the use of Embodied AI, where robots autonomously explore and reason in complex real-world environments. With the growing demand for domestic service robots, efficient navigation in unfamiliar settings has become even more crucial. Object Goal Navigation (OGN) is a fundamental task for this capability, requiring a robot to find and reach a user-specified object in an unknown environment. Solving OGN demands advanced perception, contextual reasoning, and effective exploration strategies. Recent Vision-Language Models (VLMs) and Large Language Models (LLMs) provide agents with external common knowledge and reasoning capabilities. This paper poses the critical question: “Where should VLM/LLM knowledge be fused into Object Goal Navigation?” We categorize knowledge integration into the three stages adapted from the Perception-Prediction-Planning paradigm to offer a structured survey of Object Goal Navigation approaches shaped by the VLM era. We conclude by discussing current dataset limitations and future directions, including further studies on socially interactive navigation and operation in mixed indoor - outdoor environments.

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URI
https://scholar.dgist.ac.kr/handle/20.500.11750/59402
DOI
10.7467/KSAE.2026.34.1.119
Publisher
Korean Society of Automotive Engineers
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