支持向量机、KNN和集成分类器在穿墙人体检测数据集上的性能比较研究

Jiya Adama Enoch, Ilesanmi Banjo Oluwafemi, Olulope K. Paul, F. Ibikunle, Osaji Emmanuel, Ariba Folashade Olamide
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引用次数: 0

摘要

当自然灾害发生时,灾区有可能会有许多受伤的人。为了降低死亡率,救援人员必须尽快向这些伤者提供援助。在搜救(SAR)操作中,距离估计、位置确定和分类标准都同样重要,其中任何一个的准确性都会受到另一个准确性降低的影响。救援人员使用了各种方法和方法来预测和寻找不安全的倒塌建筑结构中的受害者。由于机器学习方法的最新发展,分类算法已经显示出仅利用少数样本集获取关键数据集属性的动态能力。在不同的样本中检测人类目标在墙后的状态是这项工作的主要主题。在这里,机器学习模型中选择SVM、KNN和Ensemble算法对墙后的人体目标进行分类和识别。分类算法可以通过自动学习数据集的固有特征来获得清晰的数据特征表示。利用分类器的性能提取更有效的特征表示。分别对墙后人体目标状态进行分类和识别,并与其他分类算法的结果进行比较。结果表明,使用准确率为85%的KNN优于其他分类器(SVM 81%和Ensemble 81%),并且更有效地预测墙后的人类目标。这项工作可以在灾难后的搜救工作中帮助人类识别。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A Comparative Performance Study of Support Vector Machine, KNN, and Ensemble Classifiers on through-wall human detection Dataset
There is a chance that many injured people will be present in the disaster area when natural disasters happen. To lower the death rate, rescue workers must provide these injured people with assistance as soon as they can. In search and rescue (SAR) operations, distance estimation, position determination, and classification criteria are all equally crucial, the accuracy of each would be impacted by a decrease in the other. Rescue crews have used a variety of methods and approaches to anticipate and find victims in unsafe, collapsed building structures. Classification algorithms have shown a dynamic capacity to acquire key dataset properties by utilizing just a few sample sets, thanks to the recent development of machine learning methods. The detection of a human target's state behind a wall in diverse samples is the main topic of this work. Here, SVM, KNN, and Ensemble algorithms are selected in the machine learning model to categorize and recognize human targets behind walls. The classification algorithms can derive clear data-feature representations by automatically learning about the dataset's innate characteristics. The performance of the classifier was used to extract more effective feature representations. The classification and identification of the behind-the-wall human-target states were separately carried out, and then the results were compared with those of other classification algorithms. The outcome demonstrates that the use of KNN with 85% accuracy outperforms other classifiers (SVM 81% and Ensemble 81%) and is more effective for the prediction of human targets behind walls. This work may help with human identification during search and rescue efforts after a disaster.
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