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Main Authors: Thengane, Shrutika Vishal, Prasetyo, Marcel Bartholomeus, Tan, Yu Xiang, Meghjani, Malika
Format: Preprint
Published: 2025
Subjects:
Online Access:https://arxiv.org/abs/2503.06953
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author Thengane, Shrutika Vishal
Prasetyo, Marcel Bartholomeus
Tan, Yu Xiang
Meghjani, Malika
author_facet Thengane, Shrutika Vishal
Prasetyo, Marcel Bartholomeus
Tan, Yu Xiang
Meghjani, Malika
contents Autonomous and targeted underwater visual monitoring and exploration using Autonomous Underwater Vehicles (AUVs) can be a challenging task due to both online and offline constraints. The online constraints comprise limited onboard storage capacity and communication bandwidth to the surface, whereas the offline constraints entail the time and effort required for the selection of desired key frames from the video data. An example use case of targeted underwater visual monitoring is finding the most interesting visual frames of fish in a long sequence of an AUV's visual experience. This challenge of targeted informative sampling is further aggravated in murky waters with poor visibility. In this paper, we present MERLION, a novel framework that provides semantically aligned and visually enhanced summaries for murky underwater marine environment monitoring and exploration. Specifically, our framework integrates (a) an image-text model for semantically aligning the visual samples to the users' needs, (b) an image enhancement model for murky water visual data and (c) an informative sampler for summarizing the monitoring experience. We validate our proposed MERLION framework on real-world data with user studies and present qualitative and quantitative results using our evaluation metric and show improved results compared to the state-of-the-art approaches. We have open-sourced the code for MERLION at the following link https://github.com/MARVL-Lab/MERLION.git.
format Preprint
id arxiv_https___arxiv_org_abs_2503_06953
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle MERLION: Marine ExploRation with Language guIded Online iNformative Visual Sampling and Enhancement
Thengane, Shrutika Vishal
Prasetyo, Marcel Bartholomeus
Tan, Yu Xiang
Meghjani, Malika
Robotics
Autonomous and targeted underwater visual monitoring and exploration using Autonomous Underwater Vehicles (AUVs) can be a challenging task due to both online and offline constraints. The online constraints comprise limited onboard storage capacity and communication bandwidth to the surface, whereas the offline constraints entail the time and effort required for the selection of desired key frames from the video data. An example use case of targeted underwater visual monitoring is finding the most interesting visual frames of fish in a long sequence of an AUV's visual experience. This challenge of targeted informative sampling is further aggravated in murky waters with poor visibility. In this paper, we present MERLION, a novel framework that provides semantically aligned and visually enhanced summaries for murky underwater marine environment monitoring and exploration. Specifically, our framework integrates (a) an image-text model for semantically aligning the visual samples to the users' needs, (b) an image enhancement model for murky water visual data and (c) an informative sampler for summarizing the monitoring experience. We validate our proposed MERLION framework on real-world data with user studies and present qualitative and quantitative results using our evaluation metric and show improved results compared to the state-of-the-art approaches. We have open-sourced the code for MERLION at the following link https://github.com/MARVL-Lab/MERLION.git.
title MERLION: Marine ExploRation with Language guIded Online iNformative Visual Sampling and Enhancement
topic Robotics
url https://arxiv.org/abs/2503.06953