在软件开发课程中研究基于机器学习的对象检测任务的失败模式

Ziyuan Wang Ziyuan Wang, Jinwu Guo Ziyuan Wang, Dexin Bu Jinwu Guo, Chongchong Shi Dexin Bu
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引用次数: 0

摘要

目标检测是计算机视觉中的一个热门任务,它是找到图像中所有感兴趣的物体,并确定它们的类别和位置。当人们使用深度学习框架实现目标检测网络时,缺陷通常是由人为引入的故障引起的。这些缺陷可能导致不同类型的故障。在对象检测程序中探索频繁的故障模式可以帮助开发人员更有效地检测和修复缺陷。因此,我们对大学软件开发课程中提交的基于深度学习的目标检测程序的失败模式进行了实证研究。通过研究104名学生完成的101份提交的Yolov4对象检测任务,我们发现了这些提交中最常见的13种失败模式以及导致这些失败的六种根本原因。为了帮助学生和初级软件工程师避免目标检测程序中可能出现的错误,本文给出了分6类的13条具体建议。这些结果可以揭示基于深度学习的目标检测程序开发中失败和错误的一些基本规律,并为帮助学生和初级开发人员提高开发目标检测程序的技能提供指导。
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Investigating Failure Patterns in Machine Learning-based Object Detection Tasks in Software Development Courses
Object detection, one of the popular tasks in computer vision, is to find all objects of interest in an image and determine their category and location. When people use deep learning frameworks to implement object detection networks, defects are often caused by human-introduced faults. These defects may cause different types of failures. Exploring frequent failure patterns in object detection programs can help developers detect and fix defects more effectively and efficiently. Therefore, we conducted an empirical study on failure patterns in deep learning-based object detection programs submitted in university software development courses. By exploring 101 submissions of a Yolov4 object detection task completed by 104 students, we found the most frequent 13 failure patterns in these submissions and six types of root causes of these failures. To help students and entry-level software engineers avoid possible faults in object detection programs, 13 concrete suggestions that belong to six classes are given in this paper. These results can reveal some basic laws of failures and mistakes in the development of deep learning-based object detection programs and provide guidances to assist students and entry-level developers in improving their skills in developing object detection programs.  
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