An Image Processing based Object Counting Approach for Machine Vision Application
This is an incremental improvement for production facilities needing low-cost, high-precision counting systems.
The paper tackled the problem of object-independent product counting in machine vision applications using a camera on a conveyor, and the result was a fast, accurate, and reliable real-time system based on Otsu thresholding and Hough transformation.
Machine vision applications are low cost and high precision measurement systems which are frequently used in production lines. With these systems that provide contactless control and measurement, production facilities are able to reach high production numbers without errors. Machine vision operations such as product counting, error control, dimension measurement can be performed through a camera. In this paper, a machine vision application is proposed, which can perform object-independent product counting. The proposed approach is based on Otsu thresholding and Hough transformation and performs automatic counting independently of product type and color. Basically one camera is used in the system. Through this camera, an image of the products passing through a conveyor is taken and various image processing algorithms are applied to these images. In this approach using images obtained from a real experimental setup, a real-time machine vision application was installed. As a result of the experimental studies performed, it has been determined that the proposed approach gives fast, accurate and reliable results.