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ALMI—A Generic Active Learning System for Computational Object Classification in Marine Observation Images

机译:ALMI-A用于船舶观测图像中的计算对象分类的通用主动学习系统

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摘要

In recent years, an increasing number of cabled Fixed Underwater Observatories (FUOs) have been deployed, many of them equipped with digital cameras recording high-resolution digital image time series for a given period. The manual extraction of quantitative information from these data regarding resident species is necessary to link the image time series information to data from other sensors but requires computational support to overcome the bottleneck problem in manual analysis. As a priori knowledge about the objects of interest in the images is almost never available, computational methods are required that are not dependent on the posterior availability of a large training data set of annotated images. In this paper, we propose a new strategy for collecting and using training data for machine learning-based observatory image interpretation much more efficiently. The method combines the training efficiency of a special active learning procedure with the advantages of deep learning feature representations. The method is tested on two highly disparate data sets. In our experiments, we can show that the proposed method ALMI achieves on one data set a classification accuracy A > 90% with less than N = 258 data samples and A > 80% after N = 150 iterations, i.e., training samples, on the other data set outperforming the reference method regarding accuracy and training data required.
机译:近年来,已经部署了越来越多的有线固定水下观察计划(FUOS),其中许多配备了数码相机记录了给定期间的高分辨率数字图像时间序列。必须从这些数据中提取关于驻留物种的这些数据的定量信息,以将图像时间序列信息与来自其他传感器的数据链接到数据所必需的,但需要计算支持来克服手动分析中的瓶颈问题。作为关于图像中感兴趣对象的先验知识几乎从不可用,所需的计算方法不依赖于被带注释图像的大型训练数据集的后部可用性。在本文中,我们提出了一种更有效地收集和使用基于机器学习的天文台图像解释的培训数据的新策略。该方法将特殊主动学习过程的培训效率与深度学习特征表示的优势相结合。该方法在两个高度不同的数据集上进行测试。在我们的实验中,我们可以表明,所提出的方法ALMI在一个数据上实现了一个数据,在n = 150次迭代之后,距离n = 258个数据样本,即培训样本,即培训样本其他数据集始终表现出关于所需准确性和培训数据的参考方法。

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