• Title/Summary/Keyword: Abnormal Detection

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Defect Inspection of the Pixels in OLED Type Display Device by Image Processing (화상처리를 이용한 OLED 디스플레이의 픽셀 불량 검사에 관한 연구)

  • Park, Kyoung-Seok;Shin, Dong-Won
    • Journal of the Korean Society of Manufacturing Process Engineers
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    • v.8 no.2
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    • pp.25-31
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    • 2009
  • The image processing methods are widely used in many industrial fields to detect defections in inspection devices. In this study an image processing method was conducted for the detection of abnormal pixels in a OLED(Organic Light Emitting Diode) type panel which is used for small size displays. The display quality of an OLED device is dependent on the pixel formation quality. So, among the so many pixels, to find out the faulty pixels is very important task in manufacturing processing or inspection division. We used a line scanning type BW(Black & White) camera which has very high resolution characteristics to acquire an image of display pixel patterns. And the various faulty cases in pixel abnormal patterns are considered to detect abnormal pixels. From the results of the research, the normal BW pixel image could be restored to its original color pixel.

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A Study on the Detection and Diagnosis of the Abnormal Machining Process Using Current Signal (전류신호를 이용한 이상가공상태 검출ㆍ진단에 관한 연구)

  • 서한원;유기현;정진용;서남섭
    • Proceedings of the Korean Society of Precision Engineering Conference
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    • 1996.11a
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    • pp.212-216
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    • 1996
  • Recently, with the development of NC and CNC machine tools and the high labor wage, the cutting process requires the high speed and automatic system which uses industrial robots and the flexible manufacturing system(FMS) that combines several machine tools. In this system, the whole system can be influenced by just one of the machin tools. So it needs to detect a problem and to solve it immediately In in-process state. The monitoring system through measuring the motor current with current sensor has been attracting the attention of lots of researchers view of its low cost and flexibility. By using the pattern discriminant with the detected three-phase-current signal, that is, $I_{RMS}$, a system which can monitor and analyze abnormal machining process condition of the workpiece during the machining will be able to be developed in this research.h.

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Abnormal Object Detection-based Video Synopsis Framework in Multiview Video (다시점 영상에 대한 이상 물체 탐지 기반 영상 시놉시스 프레임워크)

  • Ingle, Palash Yuvraj;Yu, Jin-Yong;Kim, Young-Gab
    • Proceedings of the Korea Information Processing Society Conference
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    • 2022.05a
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    • pp.213-216
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    • 2022
  • There has been an increase in video surveillance for public safety and security, which increases the video data, leading to analysis, and storage issues. Furthermore, most surveillance videos contain an empty frame of hours of video footage; thus, extracting useful information is crucial. The prominent framework used in surveillance for efficient storage and analysis is video synopsis. However, the existing video synopsis procedure is not applicable for creating an abnormal object-based synopsis. Therefore, we proposed a lightweight synopsis methodology that initially detects and extracts abnormal foreground objects and their respective backgrounds, which is stitched to construct a synopsis.

Study on Intelligence (AI) Detection Model about Telecommunication Finance Fraud Accident (전기통신금융사기 사고에 대한 이상징후 지능화(AI) 탐지 모델 연구)

  • Jeong, Eui-seok;Lim, Jong-in
    • Journal of the Korea Institute of Information Security & Cryptology
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    • v.29 no.1
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    • pp.149-164
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    • 2019
  • Digital Transformation and the Fourth Industrial Revolution, electronic financial services should be provided safely in accordance with rapidly changing technology changes in the times of change. However, telecommunication finance fraud (voice phishing) accidents are currently ongoing, and various efforts are being made to eradicate accidents such as legal amendment and improvement of policy system in order to cope with continuous increase, intelligence and advancement of accidents. In addition, financial institutions are trying to prevent fraudulent accidents by improving and upgrading the abnormal financial transaction detection system, but the results are not very clear. Despite these efforts, telecommunications and financial fraud incidents have evolved to evolve against countermeasures. In this paper, we propose an intelligent over - the - counter financial transaction system modeled through scenario - based Rule model and artificial intelligence algorithm to prevent financial transaction accidents by voice phishing. We propose an implementation model of artificial intelligence abnormal financial transaction detection system and an optimized countermeasure model that can block and respond to analysis and detection results.

Intelligent Abnormal Event Detection Algorithm for Single Households at Home via Daily Audio and Vision Patterns (지능형 오디오 및 비전 패턴 기반 1인 가구 이상 징후 탐지 알고리즘)

  • Jung, Juho;Ahn, Junho
    • Journal of Internet Computing and Services
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    • v.20 no.1
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    • pp.77-86
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    • 2019
  • As the number of single-person households increases, it is not easy to ask for help alone if a single-person household is severely injured in the home. This paper detects abnormal event when members of a single household in the home are seriously injured. It proposes an vision detection algorithm that analyzes and recognizes patterns through videos that are collected based on home CCTV. And proposes audio detection algorithms that analyze and recognize patterns of sound that occur in households based on Smartphones. If only each algorithm is used, shortcomings exist and it is difficult to detect situations such as serious injuries in a wide area. So I propose a fusion method that effectively combines the two algorithms. The performance of the detection algorithm and the precise detection performance of the proposed fusion method were evaluated, respectively.

Novelty Detection on Web-server Log Dataset (웹서버 로그 데이터의 이상상태 탐지 기법)

  • Lee, Hwaseong;Kim, Ki Su
    • Journal of the Korea Institute of Information and Communication Engineering
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    • v.23 no.10
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    • pp.1311-1319
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    • 2019
  • Currently, the web environment is a commonly used area for sharing information and conducting business. It is becoming an attack point for external hacking targeting on personal information leakage or system failure. Conventional signature-based detection is used in cyber threat but signature-based detection has a limitation that it is difficult to detect the pattern when it is changed like polymorphism. In particular, injection attack is known to the most critical security risks based on web vulnerabilities and various variants are possible at any time. In this paper, we propose a novelty detection technique to detect abnormal state that deviates from the normal state on web-server log dataset(WSLD). The proposed method is a machine learning-based technique to detect a minor anomalous data that tends to be different from a large number of normal data after replacing strings in web-server log dataset with vectors using machine learning-based embedding algorithm.

Development of an intelligent camera for multiple body temperature detection (다중 체온 감지용 지능형 카메라 개발)

  • Lee, Su-In;Kim, Yun-Su;Seok, Jong-Won
    • Journal of IKEEE
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    • v.26 no.3
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    • pp.430-436
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    • 2022
  • In this paper, we propose an intelligent camera for multiple body temperature detection. The proposed camera is composed of optical(4056*3040) and thermal(640*480), which detects abnormal symptoms by analyzing a person's facial expression and body temperature from the acquired image. The optical and thermal imaging cameras are operated simultaneously and detect an object in the optical image, in which the facial region and expression analysis are calculated from the object. Additionally, the calculated coordinate values from the optical image facial region are applied to the thermal image, also the maximum temperature is measured from the region and displayed on the screen. Abnormal symptom detection is determined by using the analyzed three facial expressions(neutral, happy, sadness) and body temperature values. In order to evaluate the performance of the proposed camera, the optical image processing part is tested on Caltech, WIDER FACE, and CK+ datasets for three algorithms(object detection, facial region detection, and expression analysis). Experimental results have shown 91%, 91%, and 84% accuracy scores each.

Anomaly Detection using Geometric Transformation of Normal Sample Images (정상 샘플 이미지의 기하학적 변환을 사용한 이상 징후 검출)

  • Kwon, Yong-Wan;Kang, Dong-Joong
    • The Journal of the Institute of Internet, Broadcasting and Communication
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    • v.22 no.4
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    • pp.157-163
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    • 2022
  • Recently, with the development of automation in the industrial field, research on anomaly detection is being actively conducted. An application for anomaly detection used in factory automation is camera-based defect inspection. Vision camera inspection shows high performance and efficiency in factory automation, but it is difficult to overcome the instability of lighting and environmental conditions. Although camera inspection using deep learning can solve the problem of vision camera inspection with much higher performance, it is difficult to apply to actual industrial fields because it requires a huge amount of normal and abnormal data for learning. Therefore, in this study, we propose a network that overcomes the problem of collecting abnormal data with 72 geometric transformation deep learning methods using only normal data and adds an outlier exposure method for performance improvement. By applying and verifying this to the MVTec data set, which is a database for auto-mobile parts data and outlier detection, it is shown that it can be applied in actual industrial sites.

Data abnormal detection using bidirectional long-short neural network combined with artificial experience

  • Yang, Kang;Jiang, Huachen;Ding, Youliang;Wang, Manya;Wan, Chunfeng
    • Smart Structures and Systems
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    • v.29 no.1
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    • pp.117-127
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    • 2022
  • Data anomalies seriously threaten the reliability of the bridge structural health monitoring system and may trigger system misjudgment. To overcome the above problem, an efficient and accurate data anomaly detection method is desiderated. Traditional anomaly detection methods extract various abnormal features as the key indicators to identify data anomalies. Then set thresholds artificially for various features to identify specific anomalies, which is the artificial experience method. However, limited by the poor generalization ability among sensors, this method often leads to high labor costs. Another approach to anomaly detection is a data-driven approach based on machine learning methods. Among these, the bidirectional long-short memory neural network (BiLSTM), as an effective classification method, excels at finding complex relationships in multivariate time series data. However, training unprocessed original signals often leads to low computation efficiency and poor convergence, for lacking appropriate feature selection. Therefore, this article combines the advantages of the two methods by proposing a deep learning method with manual experience statistical features fed into it. Experimental comparative studies illustrate that the BiLSTM model with appropriate feature input has an accuracy rate of over 87-94%. Meanwhile, this paper provides basic principles of data cleaning and discusses the typical features of various anomalies. Furthermore, the optimization strategies of the feature space selection based on artificial experience are also highlighted.

Prevalence and Risk Assessment of Cervical Cancer Screening by Papanicolaou Smear and Visual Inspection with Acetic Acid for Pregnant Women at a Thai Provincial Hospital

  • Lertcharernrit, Jiraporn;Sananpanichkul, Panya;Suknikhom, Wineeya;Bhamarapravatana, Kornkarn;Suwannarurk, Komsun;Leaungsomnapa, Yosapon
    • Asian Pacific Journal of Cancer Prevention
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    • v.17 no.8
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    • pp.4163-4167
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    • 2016
  • Background: Cervical cancer is the second most common in Thailand, but the mortality rate may be rising yearly. It is a cancer that can be prevented by early screening for precancerous lesions, several methods being available. Objective: To identify the prevalence of abnormal Papanicolaou (Pap) smears and lesions with visual inspection with acetic acid (VIA) in pregnant women and assess risk factors for this group. Materials and Methods: This prospective study was performed at Prapokklao Hospital, Thailand during April-July 2016. All pregnant women of gestational age between 12-36 weeks who attended an antenatal clinic were recruited. All participants were screened for cervical cancer by Pap smear and VIA. If results of one or both were abnormal, colposcopic examination was evaluated by gynecologic oncologist. Results: A total of 414 pregnant women were recruited. Prevalence of abnormal Pap smear and VIA were 6.0 and 6.7 percent, respectively. The most common abnormal Pap smear was low grade intraepithelial lesion (LSIL, 44%). Factors associated with abnormal Pap smear in pregnant women were low BMI, multiple partners and being a government officer. In pregnancy, Pap smear had higher sensitivity and specificity than VIA for detection of precancerous cervical lesion. Patients with young coitarche or more than 25 years of active sexual activity were high risk groups. Conclusions: Prevalence of abnormal Pap smear and VIA in pregnant women was 6.0 and 6.7 percent, respectively. Factors associated with abnormal Pap smear were coitarche, years of sexual activity, low BMI, multiple partners and being a government officer.