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Multiple objects tracking in a multi-camera video surveillance system 劉威志、曾逸鴻

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Multiple objects tracking in a multi-camera video surveillance system 劉威志、曾逸鴻

E-mail: [email protected]

ABSTRACT

“Visual” is the most important perceptual system for human, and also most believe the message from visual. The majority of company, organization, community, and in the common house, that can see the “surveillance system” in many place. For the purpose of construct the intelligent environment Of visual Technologies , the focus in our research is multiple Indoor Security Monitoring. In order to detection and tracking the multiple moving object ,we use multi-camera to get the picture at difference position and angle ,and select the clearest picture automatically , recording the moving condition of object .We divide three part of our research, first, if there have multiple moving objects and the occlusion happened , the camera will hand off and get the best picture to track ; the second part , when moving object across two adjacent place , they will be tracked ceaselessly;the last part is similar to the second part, but they have difference brightness in two adjacent place.

Keywords : Multiple Camera, Occlusion, Video Surveillance Systems, Moving Object Detection Table of Contents

中文摘要 ... iii 英文摘要 ... iv 誌謝辭 ... v 內容目錄 ... vi 表目錄 ... vii 圖目錄 ... viii 第一章 緒論

... 1 第一節 研究背景與動機 ... 1 第二節 研究目的 ... 1 第三節 研究限制 ... 2 第四節 系統流程 ... 3 第五節 論文架構 ... 3 第二章 文獻探討

... 5 第三章 移動物體偵測 ... 9 第一節 建構背景模型 ... 9 第二節 前景物體偵 測 ... 13 第四章 移動物體追蹤 ... 19 第一節 攝影機色彩校正 ... 19 第二節 相同空間 下物體追蹤 ... 27 第三節 不同空間移動物體追蹤 ... 40 第五章 實驗結果與分析 ... 50 第六 章 結論 ... 56 參 考 文 獻 ... 58

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