An Intelligent Defect Detection Method of Small Sized Ceramic Tile
Using Machine Vision
Linjie Yang, Mina Chong, Qiming Li and Jun Li
Quanzhou Institute of Equipment Manufacturing, Chinese Academy of Sciences, China, Quanzhou, 362200
E-mail: kidylj@fjiram.ac.cn, junli@fjiram.ac.cn
Keywords: Ceramic Tile, Defect detection, Size Parameters, Patch Strategy, Machine Vision, Chromatism Detection,
Abstract: Quality control of small sized ceramic tile is an important part for manufacturing enterprise. To improve the
efficiency and precision of ceramic tile defect detection, an intelligent detection method is proposed in this
paper. Firstly, the noise is eliminated by image pre-processing,and the geometric primitive of ceramic tile
is taken as benchmark. Meanwhile, the nearest neighbor algorithm is adopted to search measurement point,
and the size parameters are calculated by Euclidean distance. Then, local defect feature of chromatism is
obtained by patch strategy and composite contour mask. It is necessary to merge potential block to recover
original appearance of defects. Finally, the optimized parameters from feature distribution and a
discriminant function are utilized to achieve target defect detection. The experimental results show that the
method has good detection effect and high real-time performance.
1 INTRODUCTION
With the development of automation and artificial
intelligence, AVIS(Automated Visual Inspection
System) for ceramic tile is becoming increasingly
popular due to its low cost maintenance and high
accuracy. However, most of assembly line of
ceramic tile in China still adopt traditional manual
detection method because of the limitation of
automatic technology. It will inevitably bring about
the inspection errors and visual fatigue
during the process (Boukouvalas C, 1995; Karimi M
H, 2014).
Generally, the defect detection of ceramic tile is
an important step for the whole of assembly line,
because it ensures the quality of product. In the
AVIS, if a inspection task is accomplished
automatically by computers, the efficiency and
reliability of detection process are greatly improved.
Specially, for small specification of ceramic tile
which situate under the large FOV (Field of View),
the detection system requires high-speed and real-
time. Thus, designing an effective method based on
a AVIS is very important for ensuring quality of
ceramic tile.
In last few years, image processing has been
widely applied in many aspects of manufacturing.
However, few methods are applied in actual
production, in particularly the defect detection of
ceramic tile. H. Elbehiery proposed a method of
quality control for ceramic tile by integrating a
visual control stage. However, it only works well in
the defect of textured surfaces (2005). Andrade
utilized infrared images and Artificial Neural
Network to solve the issue of automatic inspection
of ceramic tile, and the performance of the technique
has been evaluated theoretically and experimentally
in laboratory, but the system has not been applied in
practical production (Andrade, 2011). Ehsan Golkar
proposed a model which allows ceramic tile
companies to perform quality inspection without
costly artificial measuring tools, and this method can
be applied in different situations of manufacturing
production line systems (2011). Cristina Costa
presented a phase correlation based algorithm for the
automatic surface inspection of ceramic tile for fault
detection, and the algorithm can be used to register
the reference and test images (2000). However, there
are very few methods have been proposed for the
defect detection of small specification ceramic tile.
In order to solve the aforementioned limitations,
a defect detection method for ceramic tile based on
the machine vision is proposed in this paper. The
works of size measurement and chromatism
detection are completed under the large FOV and
complex environment, and the proposed method