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MAIA-一种用于环境监测和探索的机器学习辅助图像标注方法。

MAIA-A machine learning assisted image annotation method for environmental monitoring and exploration.

机构信息

Biodata Mining Group, Faculty of Technology, Bielefeld University, Bielefeld, Germany.

National Oceanography Centre, University of Southampton Waterfront Campus, Southampton, United Kingdom.

出版信息

PLoS One. 2018 Nov 16;13(11):e0207498. doi: 10.1371/journal.pone.0207498. eCollection 2018.

Abstract

Digital imaging has become one of the most important techniques in environmental monitoring and exploration. In the case of the marine environment, mobile platforms such as autonomous underwater vehicles (AUVs) are now equipped with high-resolution cameras to capture huge collections of images from the seabed. However, the timely evaluation of all these images presents a bottleneck problem as tens of thousands or more images can be collected during a single dive. This makes computational support for marine image analysis essential. Computer-aided analysis of environmental images (and marine images in particular) with machine learning algorithms is promising, but challenging and different to other imaging domains because training data and class labels cannot be collected as efficiently and comprehensively as in other areas. In this paper, we present Machine learning Assisted Image Annotation (MAIA), a new image annotation method for environmental monitoring and exploration that overcomes the obstacle of missing training data. The method uses a combination of autoencoder networks and Mask Region-based Convolutional Neural Network (Mask R-CNN), which allows human observers to annotate large image collections much faster than before. We evaluated the method with three marine image datasets featuring different types of background, imaging equipment and object classes. Using MAIA, we were able to annotate objects of interest with an average recall of 84.1% more than twice as fast as compared to "traditional" annotation methods, which are purely based on software-supported direct visual inspection and manual annotation. The speed gain increases proportionally with the size of a dataset. The MAIA approach represents a substantial improvement on the path to greater efficiency in the annotation of large benthic image collections.

摘要

数字成像已成为环境监测和勘探中最重要的技术之一。在海洋环境中,移动平台(如自主水下航行器)现在配备了高分辨率摄像机,可从海底捕获大量图像。然而,及时评估所有这些图像是一个瓶颈问题,因为在单次潜水过程中可能会收集到数万张甚至更多的图像。这使得对海洋图像分析的计算支持变得至关重要。使用机器学习算法对环境图像(特别是海洋图像)进行计算机辅助分析具有广阔的前景,但与其他成像领域相比,它具有挑战性和不同,因为无法像其他领域那样高效和全面地收集训练数据和类别标签。在本文中,我们提出了机器学习辅助图像标注(MAIA),这是一种用于环境监测和勘探的新图像标注方法,可以克服训练数据缺失的障碍。该方法结合使用自动编码器网络和基于掩模区域的卷积神经网络(Mask R-CNN),使人类观察者能够比以前更快地标注大量图像集。我们使用三个具有不同背景、成像设备和目标类别的海洋图像数据集来评估该方法。使用 MAIA,我们能够以比基于软件支持的直接视觉检查和手动标注的“传统”标注方法平均提高 84.1%的召回率来标注感兴趣的目标,速度提高与数据集的大小成正比。MAIA 方法代表了在提高大型底栖图像集标注效率方面的重大改进。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/458c/6239313/7ea8185640ff/pone.0207498.g001.jpg

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