System with Optical Mark Recognition Based on Artificial Vision for the Processing of Multiple Selection Tests in School Competitions

Carlos Yinmel Castro Buleje, Y. P. Atencio, Enrique Edgardo Condor Tinoco
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Abstract

The present study originated with the need to automate the process of qualification of multiple selection tests in school competitions at a low cost, this was done using the technology of optical mark recognition (OMR) with artificial vision algorithms for answer cards fill circles type and with conventional scanning devices, it was possible to determine the level of precision based on four important issues: economic cards, detection and correction of cards with amendments, student coding and time reading, the results show an accuracy 97.21% for the primary level and 99.24% for the secondary level that allowed to create images with the qualified tests taking into account the correct, incorrect and blank answers and printing the respective score, also the detection and storage of errors in reading was made due to printing and scanning errors, this solution allows time saving considerable since it was achieved a qualification time of 0.83 seconds for the primary level and 0.65 seconds for the secondary level, the present solution will allow the educational institutions that organize school competitions to be able to access this technology together with an integral registration system.
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基于人工视觉的光学标记识别系统在学校竞赛选择题处理中的应用
本研究的出发点是需要以低成本自动化学校竞赛中多项选择考试的资格认证过程,这是使用光学标记识别技术(OMR)与人工视觉算法来完成答题卡填充圆圈类型和传统扫描设备,可以根据四个重要问题确定精度水平:经济卡片,检测和纠正卡片的修改,学生编码和时间阅读,结果显示97.21%的初级水平和99.24%的二级水平,允许创建图像与合格的测试考虑正确,不正确和空白的答案和打印各自的分数,也检测和存储错误的阅读是由于打印和扫描错误。这个解决方案可以节省大量的时间,因为它达到了0.83秒的初级水平和0.65秒的中级水平的资格认证时间,目前的解决方案将允许组织学校比赛的教育机构能够与一个完整的注册系统一起使用这项技术。
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