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“她”视角下高校女厕设计优化措施探究——基于武汉科技大学(黄家湖校区)的实地调查
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作者 高肖祺 邵俊 +1 位作者 何性如 何筱宇 《艺术科技》 2024年第13期49-51,共3页
目的:社会管理“她”视角缺失导致女性在公共场合的如厕环境未受到平等对待,该问题在各高校尤为显著。文章基于高校实地调研,分析现状、问题,提出优化策略,旨在为高校厕所改造设计提供参考。方法:以武汉科技大学黄家湖校区女性公厕为研... 目的:社会管理“她”视角缺失导致女性在公共场合的如厕环境未受到平等对待,该问题在各高校尤为显著。文章基于高校实地调研,分析现状、问题,提出优化策略,旨在为高校厕所改造设计提供参考。方法:以武汉科技大学黄家湖校区女性公厕为研究对象,从“她”视角出发,通过实地踏勘、问卷调查与受众访谈,从点、线、面三个维度了解其现状、存在的问题,并提出针对性优化策略。结果:点空间方面,无障碍厕所严重缺失,且缺乏维护与管理;软硬件及辅助设施多样,但配备及维护不足。线空间方面,如厕流线中,厕所层级空间可达性较好,但缺乏大空间导视。面空间方面,如厕空间整体尺度偏小,部分位置未考虑女性如厕行为的安全性、私密性;配备设施使用方式的选择取决于空间大小,未考虑不同方式的卫生性、便捷性与舒适性的差异;功能性空间缺乏秩序管理。结论:点空间方面,建议按照规范标准建设无障碍厕所;完善照明、通风、软装、硬装及辅助设施;重视维护、管理与服务。线空间方面,建议提升新建建筑厕所的空间可达性,并确保如厕流线与其他流线互不干扰;建议在每栋楼出入口处设置清晰、规范的导视图,并增加地贴式导视标识。面空间方面,建议优化如厕空间、交通空间、门厅空间及功能性空间。 展开更多
关键词 “她”视角 高校女厕 女性友好型厕所 设计优化
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Advancing automated pupillometry:a practical deep learning model utilizing infrared pupil images
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作者 Dai Guangzheng Yu Sile +2 位作者 Liu Ziming Yan Hairu he xingru 《国际眼科杂志》 CAS 2024年第10期1522-1528,共7页
AIM:To establish pupil diameter measurement algorithms based on infrared images that can be used in real-world clinical settings.METHODS:A total of 188 patients from outpatient clinic at He Eye Specialist Shenyang Hos... AIM:To establish pupil diameter measurement algorithms based on infrared images that can be used in real-world clinical settings.METHODS:A total of 188 patients from outpatient clinic at He Eye Specialist Shenyang Hospital from Spetember to December 2022 were included,and 13470 infrared pupil images were collected for the study.All infrared images for pupil segmentation were labeled using the Labelme software.The computation of pupil diameter is divided into four steps:image pre-processing,pupil identification and localization,pupil segmentation,and diameter calculation.Two major models are used in the computation process:the modified YoloV3 and Deeplabv 3+models,which must be trained beforehand.RESULTS:The test dataset included 1348 infrared pupil images.On the test dataset,the modified YoloV3 model had a detection rate of 99.98% and an average precision(AP)of 0.80 for pupils.The DeeplabV3+model achieved a background intersection over union(IOU)of 99.23%,a pupil IOU of 93.81%,and a mean IOU of 96.52%.The pupil diameters in the test dataset ranged from 20 to 56 pixels,with a mean of 36.06±6.85 pixels.The absolute error in pupil diameters between predicted and actual values ranged from 0 to 7 pixels,with a mean absolute error(MAE)of 1.06±0.96 pixels.CONCLUSION:This study successfully demonstrates a robust infrared image-based pupil diameter measurement algorithm,proven to be highly accurate and reliable for clinical application. 展开更多
关键词 PUPIL infrared image algorithm deep learning model
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