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Main Authors: Kim, Yongjin, Park, Jinbum, Kang, Sanha, Kim, Hanguen
Format: Preprint
Published: 2024
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Online Access:https://arxiv.org/abs/2407.09005
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author Kim, Yongjin
Park, Jinbum
Kang, Sanha
Kim, Hanguen
author_facet Kim, Yongjin
Park, Jinbum
Kang, Sanha
Kim, Hanguen
contents The maritime shipping industry is undergoing rapid evolution driven by advancements in computer vision artificial intelligence (AI). Consequently, research on AI-based object recognition models for maritime transportation is steadily growing, leveraging advancements in sensor technology and computing performance. However, object recognition in maritime environments faces challenges such as light reflection, interference, intense lighting, and various weather conditions. To address these challenges, high-performance deep learning algorithms tailored to maritime imagery and high-quality datasets specialized for maritime scenes are essential. Existing AI recognition models and datasets have limited suitability for composing autonomous navigation systems. Therefore, in this paper, we propose a Vertical and Detail Attention (VaDA) model for maritime object segmentation and a new model evaluation method, the Integrated Figure of Calculation Performance (IFCP), to verify its suitability for the system in real-time. Additionally, we introduce a benchmark maritime dataset, OASIs (Ocean AI Segmentation Initiatives) to standardize model performance evaluation across diverse maritime environments. OASIs dataset and details are available at our website: https://www.navlue.com/dataset
format Preprint
id arxiv_https___arxiv_org_abs_2407_09005
institution arXiv
publishDate 2024
record_format arxiv
spellingShingle Introducing VaDA: Novel Image Segmentation Model for Maritime Object Segmentation Using New Dataset
Kim, Yongjin
Park, Jinbum
Kang, Sanha
Kim, Hanguen
Computer Vision and Pattern Recognition
Artificial Intelligence
Image and Video Processing
The maritime shipping industry is undergoing rapid evolution driven by advancements in computer vision artificial intelligence (AI). Consequently, research on AI-based object recognition models for maritime transportation is steadily growing, leveraging advancements in sensor technology and computing performance. However, object recognition in maritime environments faces challenges such as light reflection, interference, intense lighting, and various weather conditions. To address these challenges, high-performance deep learning algorithms tailored to maritime imagery and high-quality datasets specialized for maritime scenes are essential. Existing AI recognition models and datasets have limited suitability for composing autonomous navigation systems. Therefore, in this paper, we propose a Vertical and Detail Attention (VaDA) model for maritime object segmentation and a new model evaluation method, the Integrated Figure of Calculation Performance (IFCP), to verify its suitability for the system in real-time. Additionally, we introduce a benchmark maritime dataset, OASIs (Ocean AI Segmentation Initiatives) to standardize model performance evaluation across diverse maritime environments. OASIs dataset and details are available at our website: https://www.navlue.com/dataset
title Introducing VaDA: Novel Image Segmentation Model for Maritime Object Segmentation Using New Dataset
topic Computer Vision and Pattern Recognition
Artificial Intelligence
Image and Video Processing
url https://arxiv.org/abs/2407.09005