Evaluating Integrated Weight Linear method to class imbalanced learning in video data

Zainal Apandi, N. Mustapha, L. S. Affendey
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引用次数: 2

Abstract

With the enormous amount of video data especially with the existence of the noisy and irrelevant information, it would be difficult for a typical detection process to capture a small portion of targeted due to the class imbalance problem. In this paper, class imbalance referred to a very small percentage of positive instance versus negative instances, where the negative instances dominate the detection model, resulting in the degradation of the detection performance. This paper proposed an Integrated Weight Linear (IWL) method that integrate weight linear algorithm (WL) with principle component analysis (PCA) to eliminate imbalanced dataset in soccer video data. PCA is adopted in the first phase with the aim to alleviates the imbalanced data and prepared the reduced instances to the next phase. In the second phase, the reduces instances are refined using the weight linear algorithm. The experiment results using 9 soccer video demonstrate that the integration of PCA and WL is capable to alleviates the imbalanced problem and able to improve classification performance in video data.
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评价视频数据中班级不平衡学习的综合权重线性方法
由于视频数据量巨大,特别是存在噪声和不相关信息,由于类不平衡问题,典型的检测过程很难捕捉到一小部分目标。在本文中,类不平衡是指正实例与负实例的比例非常小,其中负实例主导了检测模型,导致检测性能下降。提出了一种将权重线性算法(WL)与主成分分析(PCA)相结合的加权线性(IWL)方法来消除足球视频数据中的不平衡数据集。在第一阶段采用主成分分析法,目的是为了缓解数据的不平衡,并为下一阶段准备减少的实例。在第二阶段,使用加权线性算法对约简实例进行细化。以9个足球视频为例的实验结果表明,PCA与WL的结合能够缓解视频数据的不平衡问题,提高视频数据的分类性能。
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