Image thinning

Author(s):  
Stéphane Marchand-Maillet ◽  
Yazid M. Sharaiha
Keyword(s):  
2011 ◽  
Vol 271-273 ◽  
pp. 1509-1513 ◽  
Author(s):  
Mei Xiu Lu ◽  
Fu Rong Wang ◽  
Feng Li

Image thinning is one of important steps of fingerprint preprocessing. Most of fingerprint recognition algorithms checked the characteristic points on thinning image. In this paper, we discover some shortages in OPTA and mathematical morphology thinning algorithm and find out the reasons for some shortages such as many glitches and snags, defective thinning, and so on. A new improved algorithm is proposed in the paper, which is an ideal algorithm because it is faster, produces less glitch, and thins completely.


2019 ◽  
Vol 52 (3-4) ◽  
pp. 252-261 ◽  
Author(s):  
Xiaohua Cao ◽  
Daofan Liu ◽  
Xiaoyu Ren

Auto guide vehicle’s position deviation always appears in its walking process. Current edge approaches applied in the visual navigation field are difficult to meet the high-level requirements of complex environment in factories since they are easy to be affected by noise, which results in low measurement accuracy and unsteadiness. In order to avoid the defects of edge detection algorithm, an improved detection method based on image thinning and Hough transform is proposed to solve the problem of auto guide vehicle’s walking deviation. First, the image of lane line is preprocessed with gray processing, threshold segmentation, and mathematical morphology, and then, the refinement algorithm is employed to obtain the skeleton of the lane line, combined with Hough detection and line fitting, the equation of the guide line is generated, and finally, the value of auto guide vehicle’s walking deviation can be calculated. The experimental results show that the methodology we proposed can deal with non-ideal factors of the actual environment such as bright area, path breaks, and clutters on road, and extract the parameters of the guide line effectively, after which the value of auto guide vehicle’s walking deviation is obtained. This method is proved to be feasible for auto guide vehicle in indoor environment for visual navigation.


2021 ◽  
Vol 40 (5) ◽  
pp. 289-300
Author(s):  
Alexandre Binninger ◽  
Floor Verhoeven ◽  
Philipp Herholz ◽  
Olga Sorkine‐Hornung
Keyword(s):  

2006 ◽  
Vol 25 (1) ◽  
pp. 49-62 ◽  
Author(s):  
Lifeng Shang ◽  
Zhang Yi ◽  
Luping Ji
Keyword(s):  

2011 ◽  
Vol 403-408 ◽  
pp. 1356-1359
Author(s):  
Fu Juan Wang ◽  
Yong Qiang Dong

In order to implement the accuracy and robust of Chinese dates surface defect detection based on machine vision techniques on line, the method of detection for Chinese dates was studied. The Chinese date is segmented from the background in RGB color space by analyzing respectively the histogram of R, G and B channel to make comparing among them and find an optimal one, resulting in good contrast between Chinese date and background in G channel. The brightness of the damaged area edge changed clearly on the whole Chinese dates area according to the gray image of R, G and B channel, especially in G channel. It shows the gray value of the defect area breaking obviously. So the damaged area could be detected by edge detect, through image thinning the defect edge was extracted. Furthermore, the geometry parameters of defect edge were calculated, these parameters could used to distinguish the defect area with the fruit area and the degree of the defect area. Experiments result proved the methods is effective to detect defect area of Chinese date.


2008 ◽  
Vol 5 (2) ◽  
pp. 75
Author(s):  
Maya Rini Handayani
Keyword(s):  

<span class="hps">Makalah ini</span><span> </span><span class="hps">membahas tentang</span><span> </span><span class="hps">proses untuk</span><span> </span><span class="hps">membuat gambar</span><span> </span><span class="hps">menjadi lebih tipis</span><span>,</span><span> </span><span class="hps">digunakan untuk memanggil</span><span> </span><span class="hps">gambar</span><span> </span><span class="hps">menipis.</span><span class="hps">gambar</span><span> </span><span class="hps">menipis adalah</span><span> </span><span class="hps">salah satu</span><span> </span><span class="hps">perubahan</span><span> </span><span class="hps">gambar</span><span> </span><span class="hps">lebih</span><span> </span><span class="hps">algoritma</span><span> </span><span class="hps">dalam operasi</span><span> </span><span class="hps">morfologi.</span><span> </span><span class="hps">itu berarti</span><span> </span><span class="hps">bahwa operasi</span><span class="hps">mengubah</span><span> </span><span class="hps">gambar ke</span><span> </span><span class="hps">biner atau</span><span> </span><span class="hps">gambar grayscale</span><span>.</span><span> </span><span class="hps">definisi</span><span> </span><span class="hps">gambar</span><span> </span><span class="hps">menipis adalah</span><span> </span><span class="hps">mengubah</span><span> </span><span class="hps">bentuk asli</span><span> </span><span class="hps">citra biner</span><span> </span><span class="hps">ke dalam sebuah gambar</span><span> </span><span class="hps">yang muncul</span><span> </span><span class="hps">batas</span><span> </span><span class="hps">obyek atau</span><span> </span><span class="hps">latar depan</span><span> </span><span class="hps">hanya di</span><span> </span><span class="hps">satu pixel</span><span>.</span>


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