Automatic Object Detection and Separation for Industrial Process Automation

Abhishek Shrestha, N. Karki, Rupesh Yonjan, Monica Subedi, S. Phuyal
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引用次数: 5

Abstract

This article presents the novel approach to detect and separate different items in the production line in the industry. This approach uses various sensors to detect the type of object, color and manufacturing defects. The main target is to automate the sorting process of the desired color and material of object to the distinguished zones through the implementation of many independent systems, which are can be integrated into the commercial industries as the large-scale implementation of this approach. As continuous manual sorting creates quality consistency and higher production and time issues, automated systems are preferred. The system rejects the inappropriate materials out of the conveyor line and accepts and places the objects of a similar type to the appropriate container. The user defines the sorting parameter which commands the system to select the required object and LCD display gives information on current operation. With all these efforts the object placed in the conveyor line is dispensed in the correct container or rejected based on the object type which helps to optimize the industrial manufacturing and product separation process.
用于工业过程自动化的自动对象检测与分离
本文介绍了一种工业生产中对不同产品进行检测和分离的新方法。这种方法使用各种传感器来检测物体的类型、颜色和制造缺陷。主要目标是通过许多独立系统的实施,将物体所需的颜色和材料自动分选到不同的区域,这些系统可以作为该方法的大规模实施集成到商业行业中。由于连续的人工分拣会造成质量一致性和更高的生产和时间问题,因此首选自动化系统。该系统将不合适的材料从输送线中剔除,并接受并放置与适当容器相似类型的物体。用户自定义排序参数,命令系统选择需要的对象,LCD显示当前操作信息。通过所有这些努力,放置在传送带上的物体被分配到正确的容器中或根据物体类型被拒绝,这有助于优化工业制造和产品分离过程。
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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