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  • 學位論文

整合式多攝影機環境安全監控系統

An Integrated Multi-Camera Surveillance System

指導教授 : 陳士農
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摘要


近年來智慧型數位監控系統的快速發展,已不再侷限於一般傳統監控系統的功能,新式的多攝影機監控系統具備自動偵測、追蹤移動物件、辨識移動物件之身分與行為分析等功能,但功能主要著重在異常偵測與物件辨識,欠缺了攝影機彼此之間的關聯性,而且對於歷史監控畫面無法提供有效的查詢功能,因此本論文提出一套可將各個攝影機之間做關聯的環境安全監控系統,並且整合物件追蹤、辨識、物件特徵記錄與查詢功能,以滿足多攝影機監控系統的即時安全防範與危機處理需求。 本論文以電腦視覺為基礎,利用多個攝影機建置環境安全監控系統,攝影機可架設在各種場所,如針對容易發生治安死角的地點、居家與辦公大樓安全管理等。本論文以實際場景進行環境安全監控系統測試,經實驗證明,藉由本系統將各個攝影機進行關聯,可有效的記錄物件特徵、即時查閱物件行經路線,達到減少查閱歷史紀錄的時間與人力,更可提高危機處理能力。

並列摘要


In recent year the growth of smart digital surveillance system is boom. Except for traditional surveillance functions, a new multi-camera surveillance system has functions of automatic detection, tracing moving objects, identifying the moving object and behavior analysis. New functions focus on anomaly detection and object identification but are lack of the relations between each camera and the functions are also lack of the capability of querying about history surveillance pictures. Therefore the paper proposes an environmental surveillance system which can relate each camera and integrate functions of object tracing, object identifying, recording and querying object features. The proposed multi-camera surveillance system is able to execute real time security protection and emergency management. The paper is based on computer vision to use several cameras to construct an environmental surveillance system. The cameras can be deployed in any kind of place, for example, to the security management of place with bad social order, to residence and to office buildings. The experiment has proved that through the connections between cameras build by the system in a real scene, the system is able to record object features sufficiently, to trace object in real time, to reduce the time for querying history records and to increase the capability of emergency management.

參考文獻


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