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Detecting abnormal fish trajectories using clustered and labeled data

机译:使用聚类和标记数据检测鱼的异常轨迹

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We propose an approach for the analysis of fish trajectories in unconstrained underwater videos. Trajectories are classified into two classes: normal trajectories which contain the usual behavior of fish and abnormal trajectories which indicate the behaviors that are not as common as the normal class. The paper presents two innovations: 1) a novel approach to abnormal trajectory detection and 2) improved performance on video based abnormal trajectory analysis of fish in unconstrained conditions. First we extract a set of features from trajectories and apply PCA. We then perform clustering on a subset of features. Based on the clustering, outlier detection is applied to each cluster. Improved results are obtained which is significant considering the challenges of underwater environments, low video quality, and erratic movement of fish.
机译:我们提出了一种在不受约束的水下视频中分析鱼的轨迹的方法。轨迹分为两类:正常轨迹(包含鱼类的正常行为)和异常轨迹(表明异常的行为不如正常类)。本文提出了两项​​创新:1)一种异常轨迹检测的新方法,以及2)在不受限制的条件下,基于视频的鱼类异常轨迹分析的性能得到了改善。首先,我们从轨迹中提取一组特征并应用PCA。然后,我们对功能的子集执行聚类。基于聚类,离群检测应用于每个聚类。考虑到水下环境,低视频质量和鱼类运动不规律的挑战,获得了改善的结果,这是非常重要的。

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