Journal of Signal and Information Processing

Volume 4, Issue 3 (August 2013)

ISSN Print: 2159-4465   ISSN Online: 2159-4481

Google-based Impact Factor: 1.19  Citations  

Image Processing Techniques in Shockwave Detection and Modeling

HTML  Download Download as PDF (Size: 890KB)  PP. 109-113  
DOI: 10.4236/jsip.2013.43B019    4,636 Downloads   7,380 Views  Citations

ABSTRACT

Shockwave detection is critical in analyzing shockwave structure and location. High speed video imaging systems are commonly used to obtain image frames during shockwave control experiments. Image edge detection algorithms become natural choices in detecting shockwaves. In this paper, a computer software system designed for shockwave detection is introduced. Different image edge detection algorithms, including Roberts, Prewitt, Sobel, Canny, and Laplacian of Gaussian, are implemented and can be chosen by the users to easily and accurately detect the shockwaves. Experimental results show that the system meets the design requirements and can accurately detect shockwave for further analysis and applications.

Share and Cite:

S. Cui, Y. Wang, X. Qian and Z. Deng, "Image Processing Techniques in Shockwave Detection and Modeling," Journal of Signal and Information Processing, Vol. 4 No. 3B, 2013, pp. 109-113. doi: 10.4236/jsip.2013.43B019.

Cited by

[1] Aerodynamic forces of interacting spheres representative of space debris re-entry: Experiments in a supersonic rarefied wind-tunnel
Acta Astronautica, 2022
[2] A Fingerprint Matching Algorithm Using the Combination of Edge Features and Convolution Neural Networks
Inventions, 2022
[3] Analysis of interaction structure of circular laminar jets using digital image processing
Journal of Visualization, 2022
[4] Gas Flow Structures Detection on Shadowgraph Images and Their Matching to CFD Using Convolutional Neural Networks
Graphicon-Conference on …, 2022
[5] Edge detection and machine learning application for shadowgraph and schlieren images analysis
Proceedings of the 19th …, 2021
[6] Results of Quantitative Analysis of High-Speed Shadowgraphy of Shock Tube Flows Using Machine Vision and Machine Learning
Doklady Physics, 2021
[7] Edge Detection and Machine Learning for Automatic Flow Structures Detection and Tracking on Schlieren and Shadowgraph Images
2021
[8] BIG DATA PROBLEM IN HYDRODYNAMIC FLOW VISUALIZATION
2020
[9] Edge Detection and Machine Learning Approach to Identify Flow Structures on Schlieren and Shadowgraph Images
2020
[10] Reflected near-field blast pressure measurements using high speed video
2020
[11] Experimental studies on shock wave interactions with flexible surfaces and development of flow diagnostic tools
2020
[12] SCHLIEREN FOTOĞRAFLARININ GÖRÜNTÜ İŞLEME YÖNTEMLERİ İLE İYİLEŞTİRİLMESİ
2020
[13] Image processing and edge detection techniques to quantify shock wave dynamics experiments
2020
[14] Visualization of gas dynamics discontinuities in supersonic flows using digital image processing methods
2019
[15] Comprehensive Investigation on Content-based Medical Image Retrieval using Radon Barcodes
2019
[16] МНОГООЧАГОВЫЙ РОЗЖИГ КАМЕРЫ СГОРАНИЯ ПОДКРИТИЧЕСКИМ СТРИМЕРНЫМ РАЗРЯДОМ СВЕРХВЫСОКОЙ ЧАСТОТЫ
2019
[17] Image Processing Techniques for Shock Wave Detection and Tracking in High Speed Schlieren and Shadowgraph Systems
2019
[18] Применение методов цифровой обработки изображений для визуализации газодинамических разрывов в сверхзвуковых потоках
2019
[19] Superresolution Interferometric Imaging with Sparse Modeling Using Total Squared Variation: Application to Imaging the Black Hole Shadow
The Astrophysical Journal, 2018
[20] Flow visualization with strong and weak gas dynamic discontinuities in computational fluid dynamics
2016
[21] Face recognition based on modular histogram of oriented directional features
2016
[22] Cancer cell growth measurement using computer vision and machine learning
ProQuest Dissertations Publishing, 2016
[23] Histogram of Oriented Directional Features for Robust Face Recognition
International Journal of Monitoring and Surveillance Technologies Research (IJMSTR), 2016
[24] Cancer Cell Growth Measurement Using Computer Vision
2016
[25] Tissue segmentation using medical image processing chain optimization
2016
[26] Визуализация течений с сильными и слабыми газодинамическими разрывами в вычислительной газовой динамике
2016
[27] Amir R. Pourshafiee June 2016
2016
[28] Técnicas de filtrado por mascara de convolucion y segmentación de color para procesamiento digital de imágenes.
2014
[29] High-speed Flow Structures Detection and Tracking in Multiple Shadow Images with Matching to CFD using Convolutional Neural Networks

Copyright © 2024 by authors and Scientific Research Publishing Inc.

Creative Commons License

This work and the related PDF file are licensed under a Creative Commons Attribution 4.0 International License.