Discriminative Fabric Defect Detection and Classification Using Adaptive Wavelet

Discriminative Fabric Defect Detection and Classification Using Adaptive Wavelet PDF Author: Xuezhi Yang
Publisher:
ISBN: 9781374725522
Category :
Languages : en
Pages :

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Book Description
This dissertation, "Discriminative Fabric Defect Detection and Classification Using Adaptive Wavelet" by Xuezhi, Yang, 楊學志, was obtained from The University of Hong Kong (Pokfulam, Hong Kong) and is being sold pursuant to Creative Commons: Attribution 3.0 Hong Kong License. The content of this dissertation has not been altered in any way. We have altered the formatting in order to facilitate the ease of printing and reading of the dissertation. All rights not granted by the above license are retained by the author. Abstract: Abstract of thesis entitled Discriminative Fabric Defect Detection and Classification Using Adaptive Wavelet Submitted by YANGXueZhi for the degree of Doctor of Philosophy at The University of Hong Kong in June 2003 This thesis develops an adaptive wavelet-based methodology which offers greater accuracy in fabric defect detection and classification than standard wavelet methods. This methodology uses wavelet transform, which can provide localized spatial-frequency analysis of the fabric image at several scales and orientations, and can discern fabric defects better than many traditional methods. In order to achieve shift-invariant representation and greater flexibility in the design of the wavelet, undecimated wavelet transform is proposed. Channel variances at the output of the undecimated wavelet transform are extracted to characterize each non-overlapping window of the fabric image. A Euclidean distance-based classifier then categorizes each image window as either defect or nondefect for the purpose of fabric defect detection, or assigns it to one of the defect categories for the purpose of fabric defect classification. Within the wavelet transform framework, we propose a design method which adapts the wavelets to the detection/classification of the fabric defects. These custom-designed wavelets are called adaptive wavelets. Traditionally, the designs of the feature extractor and the detector/classifier in a defect detection/classification system are only loosely linked, so that they are incapable of appropriate interaction. To alleviate this problem, the design of the adaptive wavelet-based feature extractoris incorporated with the design of the detector/classifier, with the single aim of achieving a minimum error rate in detection/classification. The proposed defect detection method has been evaluated on 841 defect samples from eight classes of defects, and 784 nondefect samples. A 96.1% detection rate and a 1.02% false alarm rate were achieved. The evaluations were also carried out on types of defects unknown to the designed feature extractor and detector. In the detection of 174 defect samples from three types of defects and 786 nondefect samples, a 90.8% detection rate and a 6.4% false alarm rate were achieved. Adaptive wavelets are better at detecting defects than standard wavelets, and need fewer scales of wavelet features, resulting in substantial computational savings. The proposed defect classification method has also been shown to outperform classification methods relying on the standard wavelets. In the classification of 466 defect samples containing eight classes of fabric defects and 434 nondefect samples, a 95.8% classification accuracy was achieved by our proposed method. We also explore the possibility of extending the scope by employing multiple instead of single adaptive wavelets. For each class of fabric defect, a defect-specific adaptive wavelet was designed to enhance the defect region at one channel of the wavelet transform. Multiple adaptive wavelets achieved better results than single adaptive wavelet in the inspection of 56 images containing eight classes of fabric defects, and 64 images without defects. A 98.2% detection rate and a 1.5% false alarm rate were achieved in defect detection, and a 97.5% classification accuracy was achieved in defect classification. DOI: 10.5353/th_b2991340 Subjects: Textile fabrics - Testing Wavelets (M

Discriminative Fabric Defect Detection and Classification Using Adaptive Wavelet

Discriminative Fabric Defect Detection and Classification Using Adaptive Wavelet PDF Author: Xuezhi Yang
Publisher:
ISBN: 9781374725522
Category :
Languages : en
Pages :

Get Book Here

Book Description
This dissertation, "Discriminative Fabric Defect Detection and Classification Using Adaptive Wavelet" by Xuezhi, Yang, 楊學志, was obtained from The University of Hong Kong (Pokfulam, Hong Kong) and is being sold pursuant to Creative Commons: Attribution 3.0 Hong Kong License. The content of this dissertation has not been altered in any way. We have altered the formatting in order to facilitate the ease of printing and reading of the dissertation. All rights not granted by the above license are retained by the author. Abstract: Abstract of thesis entitled Discriminative Fabric Defect Detection and Classification Using Adaptive Wavelet Submitted by YANGXueZhi for the degree of Doctor of Philosophy at The University of Hong Kong in June 2003 This thesis develops an adaptive wavelet-based methodology which offers greater accuracy in fabric defect detection and classification than standard wavelet methods. This methodology uses wavelet transform, which can provide localized spatial-frequency analysis of the fabric image at several scales and orientations, and can discern fabric defects better than many traditional methods. In order to achieve shift-invariant representation and greater flexibility in the design of the wavelet, undecimated wavelet transform is proposed. Channel variances at the output of the undecimated wavelet transform are extracted to characterize each non-overlapping window of the fabric image. A Euclidean distance-based classifier then categorizes each image window as either defect or nondefect for the purpose of fabric defect detection, or assigns it to one of the defect categories for the purpose of fabric defect classification. Within the wavelet transform framework, we propose a design method which adapts the wavelets to the detection/classification of the fabric defects. These custom-designed wavelets are called adaptive wavelets. Traditionally, the designs of the feature extractor and the detector/classifier in a defect detection/classification system are only loosely linked, so that they are incapable of appropriate interaction. To alleviate this problem, the design of the adaptive wavelet-based feature extractoris incorporated with the design of the detector/classifier, with the single aim of achieving a minimum error rate in detection/classification. The proposed defect detection method has been evaluated on 841 defect samples from eight classes of defects, and 784 nondefect samples. A 96.1% detection rate and a 1.02% false alarm rate were achieved. The evaluations were also carried out on types of defects unknown to the designed feature extractor and detector. In the detection of 174 defect samples from three types of defects and 786 nondefect samples, a 90.8% detection rate and a 6.4% false alarm rate were achieved. Adaptive wavelets are better at detecting defects than standard wavelets, and need fewer scales of wavelet features, resulting in substantial computational savings. The proposed defect classification method has also been shown to outperform classification methods relying on the standard wavelets. In the classification of 466 defect samples containing eight classes of fabric defects and 434 nondefect samples, a 95.8% classification accuracy was achieved by our proposed method. We also explore the possibility of extending the scope by employing multiple instead of single adaptive wavelets. For each class of fabric defect, a defect-specific adaptive wavelet was designed to enhance the defect region at one channel of the wavelet transform. Multiple adaptive wavelets achieved better results than single adaptive wavelet in the inspection of 56 images containing eight classes of fabric defects, and 64 images without defects. A 98.2% detection rate and a 1.5% false alarm rate were achieved in defect detection, and a 97.5% classification accuracy was achieved in defect classification. DOI: 10.5353/th_b2991340 Subjects: Textile fabrics - Testing Wavelets (M

Discriminative Fabric Defect Detection and Classification Using Adaptive Wavelet

Discriminative Fabric Defect Detection and Classification Using Adaptive Wavelet PDF Author: Xuezhi Yang (Ph.D.)
Publisher:
ISBN:
Category : Textile fabrics
Languages : en
Pages : 472

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Book Description


Wavelet Transforms and Their Recent Applications in Biology and Geoscience

Wavelet Transforms and Their Recent Applications in Biology and Geoscience PDF Author: Dumitru Baleanu
Publisher: BoD – Books on Demand
ISBN: 9535102125
Category : Science
Languages : en
Pages : 314

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Book Description
This book reports on recent applications in biology and geoscience. Among them we mention the application of wavelet transforms in the treatment of EEG signals, the dimensionality reduction of the gait recognition framework, the biometric identification and verification. The book also contains applications of the wavelet transforms in the analysis of data collected from sport and breast cancer. The denoting procedure is analyzed within wavelet transform and applied on data coming from real world applications. The book ends with two important applications of the wavelet transforms in geoscience.

Applications of Computer Vision in Fashion and Textiles

Applications of Computer Vision in Fashion and Textiles PDF Author: Calvin Wong
Publisher: Woodhead Publishing
ISBN: 0081012187
Category : Technology & Engineering
Languages : en
Pages : 314

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Book Description
Applications of Computer Vision in Fashion and Textiles provides a systematic and comprehensive discussion of three key areas that are taking advantage of developments in computer vision technology, namely textile defect detection and quality control, fashion recognition and 3D modeling, and 2D and 3D human body modeling for improving clothing fit. It introduces the fundamentals of computer vision techniques for fashion and textile applications, also reviewing computer vision techniques for textile quality control, including chapters on wavelet transforms, Gibor filters, Fourier transforms, and neural network techniques. Final sections cover recognition, modeling, retrieval technologies and advanced human shape modeling techniques. The book is essential reading for scientists and researchers working in the field of fashion production, quality assurance, product development, textiles, fashion supply chain managers, R&D professionals and managers in the textile industry. Explores computer vision technology with reference to improving budget, quality and schedule control in textile manufacturing Provides a thorough understanding of the role of computer vision in developing intelligent systems for the fashion and textiles industries Elucidates the connections between human body modeling technology and intelligent manufacturing systems

Reliability, Risk, and Safety, Three Volume Set

Reliability, Risk, and Safety, Three Volume Set PDF Author: Radim Bris
Publisher: CRC Press
ISBN: 0203859758
Category : Technology & Engineering
Languages : en
Pages : 2480

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Book Description
Containing papers presented at the 18th European Safety and Reliability Conference (Esrel 2009) in Prague, Czech Republic, September 2009, Reliability, Risk and Safety Theory and Applications will be of interest for academics and professionals working in a wide range of industrial and governmental sectors, including Aeronautics and Aerospace, Aut

Automation in Garment Manufacturing

Automation in Garment Manufacturing PDF Author: Rajkishore Nayak
Publisher: Woodhead Publishing
ISBN: 0081011334
Category : Technology & Engineering
Languages : en
Pages : 428

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Book Description
Automation in Garment Manufacturing provides systematic and comprehensive insights into this multifaceted process. Chapters cover the role of automation in design and product development, including color matching, fabric inspection, 3D body scanning, computer-aided design and prototyping. Part Two covers automation in garment production, from handling, spreading and cutting, through to finishing and pressing techniques. Final chapters discuss advanced tools for assessing productivity in manufacturing, logistics and supply-chain management. This book is a key resource for all those engaged in textile and apparel development and production, and is also ideal for academics engaged in research on textile science and technology. Delivers theoretical and practical guidance on automated processes that benefit anyone developing or manufacturing textile products Offers a range of perspectives on manufacturing from an international team of authors Provides systematic and comprehensive coverage of the topic, from fabric construction, through product development, to current and potential applications

FABRIC DEFECT DETECTION BY WAV

FABRIC DEFECT DETECTION BY WAV PDF Author: Tin-Chi Lee
Publisher: Open Dissertation Press
ISBN: 9781374716933
Category : Technology & Engineering
Languages : en
Pages : 172

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Book Description
This dissertation, "Fabric Defect Detection by Wavelet Transform and Neural Network" by Tin-chi, Lee, 李天賜, was obtained from The University of Hong Kong (Pokfulam, Hong Kong) and is being sold pursuant to Creative Commons: Attribution 3.0 Hong Kong License. The content of this dissertation has not been altered in any way. We have altered the formatting in order to facilitate the ease of printing and reading of the dissertation. All rights not granted by the above license are retained by the author. Abstract: Abstract of thesis entitled Submitted by LEE Tin Chi for the degree of Master of Philosophy at The University of Hong Kong in July 2004 Textile inspection plays an important role in maintaining the quality of products. In this thesis, three methods which utilize matched masks, wavelet transform and neural network are proposed for fabric defect detection. An evaluation of the performance of the methods was conducted on eight classes of fabric defects (Broken End, Dirty Yarn, Mispick, Netting Multiples, Slack End, Thick Bar, Thin Bar, and Wrong Draw). In the first method, a multi-channel filtering bank equipped with five matched masks was used. Matched masks are 2-D filters that characterize specific texture properties. They are designed to emphasize the Wrong Draw texture, the Mispick texture, the horizontal edges, the bars structure and the filled regions on fabric images. At the filter outputs, segmentation by thresholds is applied, followed by a logical OR operation. The total number of pixels exceeding the threshold on the resulting image determines whether the fabric image is defective or defect-free. Using this method, 96% of fabric defects were successfully detected, and the false alarm rate was 6%. The method achieved a 90% - 100% detection rate for most fabric defects, though the detection rate for Thin Bar defects was only 75%. The second method employed wavelet transform to decompose fabric images into multi-scales and orientations. During the training stage, the parameters to be optimized include the rotation angles and the two thresholds applied on the horizontal and vertical transformed images. The variation in rotation angles determines the selection of wavelet bases. During the detection stage, the discrimination criterion is based on the total number of defect windows. Using this method, only 76% of fabric defects were identified, and the false alarm rate was 7%. The detection rate for Dirty Yarn was high, but much lower for Broken End and Wrong Draw defects. The last method took advantage of the fault tolerance and learning ability of neural networks. We explored the texture structure of defect-free images so that feature extraction was conducted on repeating units with proper selection of locations. For defect images, similar feature vectors were extracted and passed to the neural network. Using this method, the detection rate was as high as 92% and the false alarm rate was 6%. Dirty Yarn, Netting Multiples, Mispick, Thin Bar and Wrong Draw defects were completely identified, while 75% of Broken End and Slack End defects were detected. However, only 73% of Thin Bar defects were detected. The method employing matched masks proved the most effective in detecting fabric defects. The neural network method was next best. The wavelet transform method was the least effective, because it was only able to detect effectively certain classes of fabric defects. Dirty Yarn, Netting Multiples, Mispick and Slack End defects are relatively easy to identify correctly. Wrong Draw and Thin Bar defects are less easy to detect and Broken End and Thick Bar defects are the most difficult to detect. DOI: 10.5353/th_b2928728 Subjects: Wavelets (Mathematics) Neural networks (Computer science) Textile fabrics - Testing

Cloud Computing and Security

Cloud Computing and Security PDF Author: Xingming Sun
Publisher: Springer
ISBN: 303000015X
Category : Computers
Languages : en
Pages : 734

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Book Description
This six volume set LNCS 11063 – 11068 constitutes the thoroughly refereed conference proceedings of the 4th International Conference on Cloud Computing and Security, ICCCS 2018, held in Haikou, China, in June 2018. The 386 full papers of these six volumes were carefully reviewed and selected from 1743 submissions. The papers cover ideas and achievements in the theory and practice of all areas of inventive systems which includes control, artificial intelligence, automation systems, computing systems, electrical and informative systems. The six volumes are arranged according to the subject areas as follows: cloud computing, cloud security, encryption, information hiding, IoT security, multimedia forensics

Eighth International Conference on Quality Control by Artificial Vision

Eighth International Conference on Quality Control by Artificial Vision PDF Author: David Fofi
Publisher: SPIE-International Society for Optical Engineering
ISBN:
Category : Business & Economics
Languages : en
Pages : 492

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Book Description
Proceedings of SPIE present the original research papers presented at SPIE conferences and other high-quality conferences in the broad-ranging fields of optics and photonics. These books provide prompt access to the latest innovations in research and technology in their respective fields. Proceedings of SPIE are among the most cited references in patent literature.

Image and Signal Processing

Image and Signal Processing PDF Author: Alamin Mansouri
Publisher: Springer
ISBN: 3319336185
Category : Computers
Languages : en
Pages : 410

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Book Description
This book constitutes the refereed proceedings of the 7th International Conference, ICISP 2016, held in May/June 2016 in Trois-Rivières, QC, Canada. The 40 revised full papers were carefully reviewed and selected from 83 submissions. The contributions are organized in topical sections on features extraction, computer vision, and pattern recognition; multispectral and color imaging; image filtering, segmentation, and super-resolution; signal processing; biomedical imaging; geoscience and remote sensing; watermarking, authentication and coding; and 3d acquisition, processing, and applications.