Contour-based object detection in Automatic Sorting System for a parcel boxes

Riky Tri Yunardi, Winarno, Pujiyanto
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引用次数: 15

Abstract

In the Automatic Sorting System, precision volume and size of the parcel boxes are all concerned. Different box size will certainly have a limited of personnel who visually identify and pick the objects. Computer vision are related to image processing and image analysis tend to focus on 2D image by pixel operation. Contour-based object detection is one alternative can measure the area for objects. In this paper will be in design automation development of a computer vision system that is able to get the volume of the parcel boxes. To get this this value if know the amount of length, width, and height. To find out the dimensional scale of parcel will be used two webcam cameras by calculating the pixels that are captured on camera and making comparison for calibration. The 2D image consists of two images from camera captured with vertical and horizontal view. After getting the length, width, and height of the parcel box, there will be a multiplication program is used to obtain the result of volume. It be separated automatically on the conveyor belt. The system can identify boxes to within 1 - 15 cm in length and width and within 5 - 20 cm in height. For the evaluation, some of boxes were sorted into three categories. The experiment result showed that the Automatic Sorting System is able to sort them out with an accuracy of 87.5%.
基于等高线的包裹箱自动分拣系统目标检测
在自动分拣系统中,包裹盒的精度、体积和大小都是很重要的。不同的箱子大小肯定会有有限的人员来视觉识别和挑选物品。计算机视觉与图像处理和图像分析有关,往往集中在二维图像的像素运算上。基于轮廓的物体检测是一种可以测量物体面积的替代方法。本文将在设计自动化开发一个能够获取包裹箱体积的计算机视觉系统。为了得到这个值,我们需要知道长度,宽度和高度。为了确定包裹的尺寸比例,我们将使用两台网络摄像机,通过计算摄像机捕获的像素并进行比较来进行校准。二维图像由相机以垂直和水平视角拍摄的两幅图像组成。在得到包裹盒的长、宽、高之后,会有一个乘法程序被用来得到体积的结果。在输送带上自动分离。该系统可以识别长度和宽度在1 - 15厘米之间,高度在5 - 20厘米之间的盒子。为了进行评估,一些盒子被分为三类。实验结果表明,自动分拣系统的分拣准确率为87.5%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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