YOLO船舶检测数据集
收藏国家数据集管理服务平台2026-04-28 更新2026-04-29 收录
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https://www.ndsms.cn/dataRetrieval/datasetDetail/?id=e66c666463f069694ac8c98e274891ee
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资源简介:
本数据集面向遥感图像AI研发团队、海事目标检测算法开发者及智能船舶监控系统企业,旨在解决船舶遥感检测中旋转/水平目标标注格式不统一、训练验证集划分零散、多格式转换耗时费力等痛点。数据集对同一批船舶遥感图片同时提供四套标注格式:A套为旋转目标检测YOLO格式(已划分训练/验证集);B套为旋转目标检测JSON格式(可Labelme编辑);C套为目标检测VOC格式(支持旋转与水平双任务);D套为水平目标检测YOLO格式(已划分训练/验证集)。四套格式图片一致,标注信息相互对应。与传统单一格式数据集不同,本数据集使用户可根据任务灵活选择格式,无需重复标注或转换。
This dataset is tailored for remote sensing image AI R&D teams, maritime object detection algorithm developers, and intelligent ship monitoring system enterprises, aiming to address the core pain points in ship remote sensing detection, including inconsistent annotation formats for rotated/horizontal objects, scattered training and validation set splits, and time-consuming multi-format conversion work. The dataset provides four sets of annotation formats for the same batch of ship remote sensing images: Format A is the YOLO format for rotated object detection, with training/validation sets already pre-split; Format B is the JSON format for rotated object detection, which is editable via Labelme; Format C is the VOC format for object detection, supporting both rotated and horizontal object detection tasks; Format D is the YOLO format for horizontal object detection, with training/validation sets already pre-split. The images corresponding to the four formats are identical, and their annotation information is fully consistent. Unlike traditional single-format datasets, this dataset enables users to flexibly select the appropriate format based on their specific tasks, eliminating the need for repeated annotation or redundant format conversion.
提供机构:
上海库帕思科技有限公司
创建时间:
2026-04-27
搜集汇总
数据集介绍

背景与挑战
背景概述
YOLO船舶检测数据集是一个面向船舶遥感检测的图像目标检测数据集,属于智慧海洋领域。该数据集针对同一批船舶遥感图片提供了四套对应的标注格式(包括旋转和水平目标检测的YOLO、JSON和VOC格式),旨在解决标注格式不统一、数据划分零散和格式转换繁琐的问题,便于用户根据具体任务灵活选用,无需重复标注或转换。
以上内容由遇见数据集搜集并总结生成



