ACCENTS Transactions on Image Processing and Computer Vision (TIPCV) ISSN (O): 2455-4707 Vol - 6, Issue - 18, February 2020

  1. Google Scholar

  2. Citation

  3. Impact Factor
A comparison study of processing and visualization in image analytics

C. Jittawiriyanukoon

Abstract

Image analytics is a process to evaluate and mine the insight about digital images. The emergence of QR-code-technology is a case, but practical cases include face as well as text recognition and analysis. This article explores smoothing approaches to enrich an image by filtering negative elements and stressing positive ones. Image smoothing is a common process and significant in mining digital images. The paper strengthens an appropriate algorithm for sharpening images by applying linear and non-linear algorithms. Sub-standardized and degraded images need to be previously sharpened prior to computer vision. It is found that the average smoothing algorithm technique outperforms other approaches regarding noise filtering as it focuses on static window size and computes the edges. Besides, it is also simply carried out in computation.

Keyword

Computer vision, Frequency domain, Image analytics, Image processing, Visualization.

Cite this article

Refference

[1][1]Gunawan TS, Gani MH, Rahman FD, Kartiwi M. Development of face recognition on raspberry pi for security enhancement of smart home system. Indonesian Journal of Electrical Engineering and Informatics (IJEEI). 2017; 5(4):317-25.

[2][2]Patel N, Shah A, Mistry M, Dangarwala K. A study of digital image filtering techniques in spatial image processing. In proceedings of the international conference on convergence of technology 2014 (pp. 1-6).

[3][3]Rashid MM, Musa A, Rahman MA, Farahana N, Farhana A. Automatic parking management system and parking fee collection based on number plate recognition. International Journal of Machine Learning and Computing. 2012; 2(2):93-8.

[4][4]Vasanth PC, Nataraj KR. Facial expression recognition using SVM classifier. Indonesian Journal of Electrical Engineering and Informatics. 2015; 3(1):16-20.

[5][5]Penangsang O, Soeprijanto A. Matlab/simulink simulation of unified power quality conditioner-battery energy storage system supplied by PV-wind hybrid using fuzzy logic controller. International Journal of Electrical & Computer Engineering. 2019; 9(3):1479-95.

[6][6]Anjum MA. A new approach to adaptive signal processing. arXiv preprint arXiv:1504.06054. 2015.

[7][7]Eftekhari S, Sadegh MO. The effect of load modelling on phase balancing in distribution networks using search harmony algorithm. International Journal of Electrical & Computer Engineering. 2019; 9(3):1461-71.

[8][8]Halimi A, Mailhes C, Tourneret JY. Nonlinear regression using smooth Bayesian estimation. In international conference on acoustics, speech and signal processing 2015 (pp. 2634-8). IEEE.

[9][9]Chouchane M, Paris S, Le Gland F, Musso C, Pham DT. On the probability distribution of a moving target. Asymptotic and non-asymptotic results. In international conference on information fusion 2011 (pp. 1-8). IEEE.

[10][10]Bennasar M, Hicks Y, Setchi R. Feature selection using joint mutual information maximisation. Expert Systems with Applications. 2015; 42(22):8520-32.

[11][11]Al-Aboosi YY, Shaameri AZ. Improved signal de-noising in underwater acoustic noise using S-transform: a performance evaluation and comparison with the wavelet transform. Journal of Ocean Engineering and Science. 2017; 2(3):172-85.

[12][12]Jung M, Marquina A, Vese LA. Variational multiframe restoration of images degraded by noisy (stochastic) blur kernels. Journal of Computational and Applied Mathematics. 2013; 240:123-34.

[13][13]ElSaid WK. Watermarking digital artworks. International Journal of Computer Applications. 2015; 125(12):17-23.

[14][14]Rani V. A brief study of various noise model and filtering techniques. Journal of Global Research in Computer Science. 2013; 4(4):166-71.

[15][15]Nazir I, Jan R, Nazir U, Yousuf A. A comparative review paper for noise models and image restoration techniques. International Journal of Computer Science and Mobile Computing. 2017; 6(6):405-10.

[16][16]Garg R, Kumar A. Comparison of various noise removals using Bayesian framework. International Journal of modern engineering research. 2012; 2(1):265-70.

[17][17]Praveen KS, Hamarnath G, Babu KP, Sreenivasulu M, Sudhakar K. Implementation of image sharpening and smoothing using filters. International Journal of Scientific Engineering and Applied Science. 2016; 2(1):7-14.

[18][18]Das S, Saikia J, Das S, Goni N. A comparative study of different noise filtering Techniques in digital images. International Journal of Engineering Research and General Science. 2015; 3(5):180-90.

[19][19]Gupta S, Mazumdar SG. Sobel edge detection algorithm. International journal of computer science and management Research. 2013; 2(2):1578-83.

[20][20]Alshamarti HA. Removal of gaussian noise on the image edges using the prewitt operator and threshold function technical. Journal of Computer Engineering. 2013; 15:81-5.

[21][21]Gupta G. Algorithm for image processing using improved median filter and comparison of mean, median and improved median filter. International Journal of Soft Computing and Engineering. 2011; 1(5):304-11.

[22][22]Dhar R, Gupta R, Baishnab KL. An analysis of CANNY and LAPLACIAN of GAUSSIAN image filters in regard to evaluating retinal image. In international conference on green computing communication and electrical engineering 2014 (pp. 1-6). IEEE.

[23][23]Goyal A, Bijalwan A, Chowdhury MK. A comprehensive review of image smoothing techniques. International Journal of Advanced Research in Computer Engineering & Technology. 2012; 1(4):315-9.

[24][24]Fan Z, Weng Y, Chen G, Liao H. 3D interactive surgical visualization system using mobile spatial information acquisition and autostereoscopic display. Journal of Biomedical Informatics. 2017; 71:154-64.

[25][25]Kaur H, Sohi N. A study for applications of histogram in image enhancement. The International Journal of Engineering and Science. 2017; 6(6):59-63.