Based on Table 3 of the test results on 21 
concrete, the results show the success of the 
succession shown in Table 4 
Table 4: Percent of Success. 
Amount of 
sample data 
Number of 
Testing True 
True 
Positive 
False 
Negative 
21  16  76,2 %  23,8 % 
 
From Table 4 based on the test data taken, the 
result of the applied method is the ability to detect 
precisely the potential of cracking in sequential 
image with the percentage of result of True Positive 
Rate equal to 76,2% and False Negative Rate equal 
to 23,8%, where from 21 concrete tested, the number 
of tests considered correct is 16 concrete. 
4   CONCLUSION 
From the research results obtained, the 
conclusionsare as follows: 
1.  Methods in the research can be used as a 
potential approach to the detection of cracks in 
the image data sequentially concrete 
compression test results. 
2.  From the research data, the applied method 
resulted in a True Positive Rate is 76.2% and 
from the 21 concrete tested, the correct test 
amount is 16 concrete. 
3.  The method used can be applied to research 
data with good image quality, adequate lighting 
and static image of each frame of data retrieval 
during research. 
4.  The success rate of detection depends on the 
image capture process, as well as the quality of 
the test image. The image quality and 
illumination of the bad image will influence the 
research result. 
REFERENCES 
B Yu, R S Bradley, C Soutis, and P J Withers, 2016. A 
comparison of different approaches for imaging cracks 
in composites by X-ray microtomography, in Royal 
Society Publishing,  
Broberg P, 2013. Surface crack detection in welds using 
thermography, in NDT&E International, vol. 57, 
pp.69-73. 
Dorafshan Sattar , Maguire Marc , and Qi Xiaojun, 2016, 
Automatic Surface Crack Detection in Concrete 
Structures Using OTSU Thresholding and 
Morphological Operations, in CEE Faculty 
Publications. 
EkaDodiSuryanto, 2015, 
EkstraksiFiturHaralickMenggunakan Citra Mikroskop 
Digital TrinocularUntuk Proses 
IdentifikasiCacingPenyakit Kaki Gajah, in  
TeknikElektro, FakultasTeknik, Universitas Sumatera 
Utara. 
Litorowicz A, 2006, Identification and quantification of 
cracks in concrete by optical fluorescent microscopy, 
in Cement and Concrete Research, vol. 36, pp. 1508-
1515 
Nishikawa T, J Yoshida, T Sugiyama, and Y Fujino, 2012. 
Concrete Crack Detection by Multiple Sequential 
Image Filtering, in Computer-Aided Civil and 
Infrastructure Engineering, vol. 27, pp. 29-47. 
Sony NuryadinSyarifuddin, 2006, Analisis Filtering Citra 
DenganMetode Mean 
Filter dan Median Filter, in JurusanTeknikInformatika, 
FakultasTeknikdan 
IlmuKomputer, UniversitasKomputer Indonesia,. 
Yamaguchi Tomoyuki and Shuji Hashimoto, 2010,  Fast 
crack detection method for large-size concrete surface 
images using percolation-based image processing, in 
Machine Vision and Applications, pp. 797 809. 
Zhangcan Huang, Fan Xi, Liu HaiMing  A.M.A. Talab, 
2015, Detection crack in the image using Otsu method 
and multiple filtering in image processing techniques, 
in Optik - Int. J. Light Electron Opt.