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博碩士論文 etd-0722118-153252 詳細資訊
Title page for etd-0722118-153252
論文名稱
Title
自動化軸承瑕疵檢測系統
Automatic Bearing Defect Inspection System
系所名稱
Department
畢業學年期
Year, semester
語文別
Language
學位類別
Degree
頁數
Number of pages
56
研究生
Author
指導教授
Advisor
召集委員
Convenor
口試委員
Advisory Committee
口試日期
Date of Exam
2018-07-31
繳交日期
Date of Submission
2018-08-22
關鍵字
Keywords
影像處理、軸承、機器視覺、資料庫、瑕疵檢測
Database, Defect Detection, Image Processing, Bearing, Machine Vision
統計
Statistics
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中文摘要
軸承為現代機械及車輛之主要支撐形式,被廣泛運用,包括國防、通訊衛星及航空等,其中軸承精度及安裝好壞標準嚴謹,所以對軸承生產品質需予更精準地檢測。目前市面上,大多仍依靠人眼辨識表面瑕疵及使用多樣儀器量測軸承幾何尺寸,但人眼檢測具有下列缺失:1.每個人對瑕疵標準不一。2.長時間工作下,容易疲憊,導致漏檢或誤檢狀況。3.需花費大量人力及耗費時間。
本研究旨在開發一套自動化軸承瑕疵檢測系統,透過機器視覺與硬體機構結合,達到自動檢測軸承幾何尺寸瑕疵及表面瑕疵。本系統主要對軸承四種部分進行檢測,包括端面、圓周面、內部及圓周面型態,其中又分為幾何尺寸瑕疵檢測及表面瑕疵檢測。首先對工業相機進行比例校正,計算實際尺寸與像素間比例,並輸入軸承檢測之標準規格,讓系統作為篩選依據。接著透過最小平方圓方法,得到軸承上下端面真圓度及圓尺寸;再使用座標轉換及正規化灰階變異數檢測法,計算端面表面瑕疵。利用旋轉台及影像拼接,擷取軸承圓周面及內部影像,使用線段偵測得到圓周面高度尺寸;透過傅立葉轉換,計算頻率圖上平均能量值曲率最大之最佳半徑,並去除中心點及最佳半徑外頻率元素,將影像反傅立葉轉換,將影像二值化分割,計算圓周面表面瑕疵;使用正規化灰階變異數檢測法,對內部表面瑕疵進行偵測。透過背光燈源打光圓周面,藉由線段及亮度個數,能分辨加工痕有無或大小是否一致。利用自動化軸承瑕疵檢測系統,能將物件特徵標準一致化,全天不停歇檢測,提高生產效率,降低人力成本,減少產品不良率、誤判率及漏檢率。
Abstract
Bearings are the main form of support for modern machinery and vehicles, and are widely used, including national defense, communications satellites and aviation. Among them, bearing precision and installation standards are rigorous, so the quality of bearing production needs to be more accurately detected. At present, most of the factories still rely on the human eye to identify the surface defects and use a variety of instruments to measure the bearing geometry, but the human eye detection has the following defects: 1. Each person has different standards. 2. Under long hours of work, it is easy to be exhausted, resulting in missed or missed detection conditions. 3. It takes a lot of manpower and time.
This study aims to develop an automated bearing defect inspection system that combines machine vision with hardware to automatically detect bearing geometry and surface flaws. The system mainly tests the four parts of the bearing, including the end face, the circumferential surface, the inner and the circumferential surface type, and detect geometric size and surface defect. First, the industrial camera is scaled, the actual size and pixel ratio are calculated, and the standard specifications of bearing inspection are input to make the system a screening basis. Then, through the least square circle method, the roundness and the circle size of the upper and lower end faces of the bearing can be obtained; and the surface flaw is calculated by using the coordinate conversion and the normalized gray-scale variation number detection method. Using the rotating table and image Stitching, the bearing circumferential surface and internal image are captured, and the circumferential surface height dimension is obtained by using the line segment detection; the Fourier transform is used to calculate the optimal radius of the average energy value curvature on the frequency map, deleting the center point and outside the radius is converted by inverse Fourier transform. The image is binarized and divided to calculate the surface flaws of the circumferential surface. The internal surface flaws are detected using normalized gray-scale variation detection method. By illuminating the circumferential surface through the backlight, the number of lines and brightness can be used to distinguish whether the processing marks are uniform or the size is the same. The automated bearing defect detection system can consistently standardize the object characteristics, non-stop testing throughout the day, improve production efficiency, reduce labor costs, and reduce product defect rate, false positive rate and missed detection rate.
目次 Table of Contents
論文審定書 i
誌謝 ii
中文摘要 iii
英文摘要 iv
目 錄 vi
圖 次 ix
表 次 xi
第一章 緒論 1
1.1研究背景與目的 1
1.2相關研究 4
第二章 系統架構 8
2.1硬體架構 8
2.1.1工業相機 9
2.1.2外同軸光源 10
2.2軟體架構 11
2.2.1資料管理 12
2.2.2影像校正 13
2.2.3帳號管理 14
2.2.4檢測結果報告 16
第三章 研究方法 18
3.1第一&三檢測站 18
3.1.1輪廓偵測 19
3.1.2圓形逼近法 20
3.1.3座標轉換 22
3.1.4正規化灰階變異數檢測法 24
3.2第二檢測站 26
3.2.1傅立葉轉換 28
3.2.2內部檢測 30
3.3第四檢測站 31
3.3.1 Sobel邊緣偵測 32
3.3.2線性迴歸(Linear Regression) 33
3.3.3灰階值計算 35
第四章 實驗結果 36
第五章 結論與未來展望 41
參考文獻 42
參考文獻 References
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