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Main Authors: Viswanathan, Vignesh Kottayam, Bai, Yifan, Fredriksson, Scott, Satpute, Sumeet, Kanellakis, Christoforos, Nikolakopoulos, George
Format: Preprint
Published: 2025
Subjects:
Online Access:https://arxiv.org/abs/2510.24554
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author Viswanathan, Vignesh Kottayam
Bai, Yifan
Fredriksson, Scott
Satpute, Sumeet
Kanellakis, Christoforos
Nikolakopoulos, George
author_facet Viswanathan, Vignesh Kottayam
Bai, Yifan
Fredriksson, Scott
Satpute, Sumeet
Kanellakis, Christoforos
Nikolakopoulos, George
contents In this work, we present a hierarchical framework designed to support robotic inspection under environment uncertainty. By leveraging a known environment model, existing methods plan and safely track inspection routes to visit points of interest. However, discrepancies between the model and actual site conditions, caused by either natural or human activities, can alter the surface morphology or introduce path obstructions. To address this challenge, the proposed framework divides the inspection task into: (a) generating the initial global view-plan for region of interests based on a historical map and (b) local view replanning to adapt to the current morphology of the inspection scene. The proposed hierarchy preserves global coverage objectives while enabling reactive adaptation to the local surface morphology. This enables the local autonomy to remain robust against environment uncertainty and complete the inspection tasks. We validate the approach through deployments in real-world subterranean mines using quadrupedal robot. A supplementary media highlighting the proposed method can be found here https://youtu.be/6TxK8S_83Lw.
format Preprint
id arxiv_https___arxiv_org_abs_2510_24554
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle An Adaptive Inspection Planning Approach Towards Routine Monitoring in Uncertain Environments
Viswanathan, Vignesh Kottayam
Bai, Yifan
Fredriksson, Scott
Satpute, Sumeet
Kanellakis, Christoforos
Nikolakopoulos, George
Robotics
In this work, we present a hierarchical framework designed to support robotic inspection under environment uncertainty. By leveraging a known environment model, existing methods plan and safely track inspection routes to visit points of interest. However, discrepancies between the model and actual site conditions, caused by either natural or human activities, can alter the surface morphology or introduce path obstructions. To address this challenge, the proposed framework divides the inspection task into: (a) generating the initial global view-plan for region of interests based on a historical map and (b) local view replanning to adapt to the current morphology of the inspection scene. The proposed hierarchy preserves global coverage objectives while enabling reactive adaptation to the local surface morphology. This enables the local autonomy to remain robust against environment uncertainty and complete the inspection tasks. We validate the approach through deployments in real-world subterranean mines using quadrupedal robot. A supplementary media highlighting the proposed method can be found here https://youtu.be/6TxK8S_83Lw.
title An Adaptive Inspection Planning Approach Towards Routine Monitoring in Uncertain Environments
topic Robotics
url https://arxiv.org/abs/2510.24554