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An analysis of altitude, citizen science and a convolutional neural network feedback loop on object detection in Unmanned Aerial Systems

机译:无人机空中系统对象检测对物体检测的高度,公民科学与卷积神经网络反馈回路分析

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Using automated processes to detect wildlife in uncontrolled outdoor imagery in the field of wildlife ecology is a challenging task. In imagery provided by Unmanned Aerial Systems (UAS), this is especially true where individuals are small and visually similar to background substrates. To address these challenges, this work presents an automated feedback loop which can operate on large scale imagery, such as UAS generated orthomosaics, to train convolutional neural networks (CNNs) with extremely unbalanced class sizes. This feedback loop was used to help train CNNs using imagery classified by both expert biologists and citizen scientists at the Wildlife@home project. Utilizing the feedback loop dramatically reduced population count error rates from previously published work: from +150% to 3.93% on citizen scientist training data and +88% to +5.24% on expert training data. The system developed was then utilized to investigate the effect of altitude on CNN predictions. The training dataset was split into three subsets depending on the altitude of the imagery (75 m,100 m and 120 m). While the lowest altitude was shown to provide the best predictions of the three (+11.46%), the aggregate data set still provided the best results (-3.93%) indicating that there is greater benefit to be gained from a large data set at this scale, and there is potential benefit to having training data from multiple altitudes. This article is an extended version of "Detecting Wildlife in Unmanned Aerial Systems Imagery using Convolutional Neural Networks Trained with an Automated Feedback Loop" published in the proceedings of the 18th International Conference of Computational Science (ICCS 2018) [1]. (C) 2019 Elsevier B.V. All rights reserved.
机译:使用自动化过程在野生动物生态学领域的不受控制的户外图像中检测野生动物是一项挑战的任务。在由无人空中系统(UAS)提供的图像中,尤其如此,其中个体小且视觉上类似于背景基板。为了解决这些挑战,这项工作提供了一种自动反馈循环,可以在大规模图像上运行,例如UAS生成的正轨,以具有极其不平衡的课程尺寸的卷曲神经网络(CNNS)。该反馈循环用于帮助使用由野生动物@ Home项目的专家生物学家和公民科学家分类的图像使用图像。利用反馈回路大大减少了先前发布的工作人口计数错误率:公民科学家培训数据的+ 150%至3.93%,专家培训数据+ 88%至+ 5.24%。然后,系统开发的系统来研究海拔高度对CNN预测的影响。训练数据集分为三个子集,具体取决于图像的高度(75米,100米和120米)。虽然显示最低海拔高度提供三(+ 11.46%)的最佳预测,但总数据集仍提供最佳结果(-3.93%),表明从该数据集中获得更大的益处规模,具有从多个高度培训数据的潜在好处。本文是第18届国际计算科学会议(ICCS 2018)[1]的第18届国际计算科学会议(ICCS 2018)[1]中发表了一份扩展了“无人机神经网络检测无人机神经网络中的野生动物。 (c)2019 Elsevier B.v.保留所有权利。

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