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dc.contributor.authorShih-Shuan Taizh_TW
dc.contributor.authorYi-Li Hozh_TW
dc.date112學年度第二學期zh_TW
dc.date.accessioned2024-10-18T09:04:03Z-
dc.date.available2024-10-18T09:04:03Z-
dc.date.submitted2024-10-18-
dc.identifier.otherD0916225、D0949852zh_TW
dc.identifier.urihttp://dspace.fcu.edu.tw/handle/2376/4959-
dc.description.abstractA B S T R A C T In response to the stringent safety requirements of semiconductor cleanrooms, this study aims to develop an advanced dust-free protective equipment inspection system tailored for personnel entering these critical environments. Central to this system is the application of human pose detection techniques, which precisely identify essential body parts such as the head, body, hands, and foot. These detections serve as the foundation for deep learning network architectures that rigorously evaluate the adequacy of protective suits worn by personnel. Additionally, a system is designed to monitor the effectiveness of dust removal and ensure comprehensive coverage during the air shower process, crucial for maintaining impeccable cleanliness standards. The efficacy of the proposed pipeline is substantiated through rigorous validation encompassing comprehensive quantitative and qualitative analyses. Initial trials demonstrate robust perfor- mance, with quantitative accuracy rates of 98.42% for the protective equipment inspection system and an error rate of approximately 5% for the air showering process system. These results affirm the system’s capability to reliably assess adherence to safety protocols in real-time scenarios. Beyond its immediate application in semiconductor cleanrooms, this adaptable system holds promise for integration into diverse sectors where stringent safety and contamination- free environments are paramount. Future research aims to enhance the system’s adaptability to varying operational conditions and expand its functionalities through advancements in real-time feedback mechanisms and integration with edge computing technologies.zh_TW
dc.description.tableofcontentsTable of Content 1. Introduction 3 2. Literature Review 4 2.1. Inspection System for Personal Protective Equipment 5 2.2. Research Gap 6 3. Proposed Method 6 3.1. Data Preparation 6 3.2. CNN Model Development 7 3.3. Protective Equipment Verification 9 3.4. Air Showering Process Checking 10 4. Experiment Setup 10 4.1. Experimental Dataset 12 4.2. Hardware Devices Setup 12 4.3. Network Parameter Configuration 12 4.4. Performance Metrics 13 5. Results 14 5.1. Protective equipment verification 14 5.2. Air-shower detection 16 5.3. Limitation 17 6. Conclusion 18 References 19zh_TW
dc.format.extent21p.zh_TW
dc.language.isoenzh_TW
dc.rightsopenbrowsezh_TW
dc.subjectcleanroomzh_TW
dc.subjectinspectionzh_TW
dc.subjectdeep learningzh_TW
dc.subjectprotective equipmentzh_TW
dc.titleSmart Dust-Free Protective Equipment and Cleanroom Inspection Systemzh_TW
dc.title.alternativeSmart Dust-Free Protective Equipment and Cleanroom Inspection Systemzh_TW
dc.typeUndergraReportzh_TW
dc.description.courseDESIGN AND DEPLOYMENT OF INTELLIGENT VISION SYSTEMzh_TW
dc.contributor.department電子工程學系, 資訊電機學院zh_TW
dc.description.instructorLiong, Sze-Teng-
dc.description.programme電子工程學系, 資訊電機學院zh_TW
分類:資電112學年度

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