Department of Marine Sciences, University of Georgia, Athens, Georgia, United States of America.
Institute for Artificial Intelligence, University of Georgia, Athens, Georgia, United States of America.
PLoS One. 2020 Mar 24;15(3):e0230671. doi: 10.1371/journal.pone.0230671. eCollection 2020.
Coral reefs are biologically diverse and structurally complex ecosystems, which have been severally affected by human actions. Consequently, there is a need for rapid ecological assessment of coral reefs, but current approaches require time consuming manual analysis, either during a dive survey or on images collected during a survey. Reef structural complexity is essential for ecological function but is challenging to measure and often relegated to simple metrics such as rugosity. Recent advances in computer vision and machine learning offer the potential to alleviate some of these limitations. We developed an approach to automatically classify 3D reconstructions of reef sections and assessed the accuracy of this approach. 3D reconstructions of reef sections were generated using commercial Structure-from-Motion software with images extracted from video surveys. To generate a 3D classified map, locations on the 3D reconstruction were mapped back into the original images to extract multiple views of the location. Several approaches were tested to merge information from multiple views of a point into a single classification, all of which used convolutional neural networks to classify or extract features from the images, but differ in the strategy employed for merging information. Approaches to merging information entailed voting, probability averaging, and a learned neural-network layer. All approaches performed similarly achieving overall classification accuracies of ~96% and >90% accuracy on most classes. With this high classification accuracy, these approaches are suitable for many ecological applications.
珊瑚礁是生物多样性和结构复杂的生态系统,已经受到人类活动的严重影响。因此,需要对珊瑚礁进行快速的生态评估,但目前的方法需要在潜水调查期间或在调查中收集的图像上进行耗时的手动分析。珊瑚礁的结构复杂性对生态功能至关重要,但难以测量,并且通常简化为简单的指标,如粗糙度。计算机视觉和机器学习的最新进展提供了缓解这些限制的潜力。我们开发了一种自动分类珊瑚礁部分的 3D 重建的方法,并评估了该方法的准确性。使用从视频调查中提取的图像,使用商业结构从运动软件生成珊瑚礁部分的 3D 重建。为了生成 3D 分类地图,将 3D 重建上的位置映射回原始图像,以提取位置的多个视图。测试了几种方法来将来自点的多个视图的信息合并到单个分类中,所有方法都使用卷积神经网络对图像进行分类或提取特征,但在用于合并信息的策略上有所不同。合并信息的方法包括投票、概率平均和学习的神经网络层。所有方法的性能都相似,总体分类准确率约为 96%,大多数类别的准确率>90%。由于这种高分类准确性,这些方法适用于许多生态应用。