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  • 學位論文

工地安全監控系統

Construction Site Surveillance System

指導教授 : 丁肇隆
共同指導教授 : 張瑞益
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摘要


近年來工地事故頻傳,營造業之重大職業災害發生比率,相較於其他行業更為嚴重。其中,工地人員裝備安全配戴不齊為造成嚴重傷害的主要原因。為了避免悲劇一再發生,藉由人體偵測及物件辨識技術,判定勞工進入工地時是否按規定著裝,以達到更全面性的安全檢查。 本論文主要分為三大部分:影像前處理、特徵擷取及辨識。首先,以網路攝影機拍攝影像後,透過背景相減法擷取移動的前景影像,藉由前景高度動態定位出頭部及軀幹位置,接著再各別抽取色調直方圖、飽和直方圖以及區域二元圖樣(Local Binary Pattern, LBP)作為特徵,再交由支持向量機(Support Vector Machine, SVM)進行分類。實驗結果顯示,本系統可以有效的辨識工地安全帽及工地背心,其準確率分別為97%和93%。

並列摘要


Numerous construction site accidents have happened around the world in recently years. According to the Ministry of Labor, the occurrence rate of severe occupational injury in construction industry is much higher than others. This high risk is primarily caused by the deficiency of the personal protective equipment (PPE). In this thesis, we apply to the technique of body detection and object recognition on PPE checking system to examine whether construction workers are equipped as prescribed or not. As the result, the rate of construction hazard could be reduced. There are three parts in our system which including image preprocessing, feature extraction and recognition. First, videos of workers are taken by an IP camera. Then, the moving foreground images would be extracted by background subtraction, and the positions of head and body are located by the height of the foreground image. Lastly, the Support vector machine (SVM) is utilized to perform classification on the features which are hue histogram, saturation histogram and local binary pattern (LBP). The experiment results show the system could effectively recognize the safety hats and safety vests with the accuracies of 97% and 93%, respectively.

參考文獻


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被引用紀錄


李佳謙(2017)。基於機器視覺之車牌辨識與車輛追蹤〔碩士論文,國立臺灣大學〕。華藝線上圖書館。https://doi.org/10.6342/NTU201702836

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