鱼类探测和运动跟踪

Nhat Nguyen, Kien N. Huynh, N. N. Vo, T. V. Pham
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引用次数: 8

摘要

鱼类探测和跟踪是研究海洋学的一个重要步骤,特别是对于预测水质变化和种群中鱼类数量的增加或减少。本文提出将高斯混合模型与帧差算法(CGMMFD)相结合来提高不同场景下的跟踪性能。此外,还研究了平均背景、高斯混合模型、平均偏移跟踪和粒子滤波等四种技术。在本研究中,我们使用自建的数据库,包含一些典型的跟踪情况,如错觉的出现、鱼的不同游动速度和水质。均方误差和方差用于评估每种技术在不同场景下的性能。实验结果表明,该算法具有较高的跟踪精度。虽然其他技术在某些特定情况下难以跟踪鱼的位置或鱼的质心,但本文提出的算法可以在不同的情况下表现良好。
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Fish detection and movement tracking
Fish Detection and Tracking is an important step in studying oceanography, especially for forecasting changes in the quality of water and the increasing or decreasing number of fish in a population. In this paper, combination of Gaussian Mixture Model and Frame-Differencing algorithm (CGMMFD) is proposed to improve tracking performance in different scenarios. Also, four other techniques, namely Mean Background, Gaussian Mixture Model, Mean Shift Tracking and Particle Filter are also investigated. In this study, we use the self-built database with some typical tracking situations such as appearance of illusions, different swimming velocities of the fish and qualities of water. Mean square error and Variance are used to assess the performance of each technique for different scenarios. The experimental results indicate that our proposed algorithm gives higher tracking accuracy. While other techniques have difficulties to track the fish location or the fish centroid in some certain scenarios, the proposed algorithm can perform well in different situations.
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