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首页> 外文期刊>ISPRS Annals of the Photogrammetry, Remote Sensing and Spatial Information Sciences >ADDRESSING THE CLASS IMBALANCE PROBLEM IN THE AUTOMATIC IMAGE CLASSIFICATION OF COASTAL LITTER FROM ORTHOPHOTOS DERIVED FROM UAS IMAGERY
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ADDRESSING THE CLASS IMBALANCE PROBLEM IN THE AUTOMATIC IMAGE CLASSIFICATION OF COASTAL LITTER FROM ORTHOPHOTOS DERIVED FROM UAS IMAGERY

机译:从UAS图像源自uas Imagery的沿前凋落物自动图像分类中的类别不平衡问题

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Unmanned Aerial Systems (UAS) has been recently used for mapping marine litter on beach-dune environment. Machine learning algorithms have been applied on UAS-derived images and orthophotos for automated marine litter items detection. As sand and vegetation are much predominant on the orthophoto, marine litter items constitute a small set of data, thus a class much less represented on the image scene. This communication aims to analyse the class imbalance issue on orthophotos for automated marine litter items detection. In the used dataset, the percentage of patches containing marine litter is close to 1% of the total amount of patches, hence representing a clear class imbalance issue. This problem has been previously indicated as detrimental for machine learning frameworks. Three different approaches were tested to address this imbalance, namely class weighting, oversampling and classifier thresholding. Oversampling had the best performance with a f1-score of 0.68, while the other methods had f1-score value of 0.56 on average. The results indicate that future works devoted to UAS-based automated marine litter detection should take in consideration the use of the oversampling method, which helped to improve the results of about 7% in the specific case shown in this paper.
机译:无人驾驶系统(UAS)已被用于在海滩沙丘环境上映射海洋垃圾。机器学习算法已应用于UAS衍生的图像和用于自动海洋垃圾项目检测的矫正器。由于沙子和植被在邻粒子上占主导地位,海洋垃圾项目构成了一小一组数据,因此在图像场景上表示较少的阶级。此沟通旨在分析自动化海洋垃圾项目检测的正交级别的不平衡问题。在二手数据集中,包含海上垃圾的补丁的百分比接近斑块总量的1%,因此代表明确的类别不平衡问题。此前已被指示对机器学习框架有害。测试了三种不同的方法以解决这种不平衡,即类加权,过采样和分类器阈值。过采样具有最佳性能,F1分数为0.68,而其他方法平均具有0.56的F1分数值。结果表明,致力于基于UA的自动化海洋垃圾检测的未来作品应考虑到使用过采样方法,这有助于在本文所示的特定情况下提高约7%的结果。

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