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RAPID VISUAL PRESENTATION TO SUPPORT GEOSPATIAL BIG DATA PROCESSING

机译:支持地理空间大数据处理的快速视觉演示

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Given the limited number of human GIS/image analysts at any organization, use of their time and organizational resources is important, especially in light of Big Data application scenarios when organizations may be overwhelmed with vast amounts of geospatial data. The current manuscript is devoted to the description of experimental research outlining the concept of Human-Computer Symbiosis where computers perform tasks, such as classification on a large image dataset, and, in sequence, humans perform analysis with Brain-Computer Interfaces (BCIs) to classify those images that machine learning had difficulty with. The addition of the BCI analysis is to utilize the brain’s ability to better answer questions like: “Is the object in this image the object being sought?” In order to determine feasibility of such a system, a supervised multi-layer convolutional neural network (CNN) was trained to detect the difference between ‘ships’ and ‘no ships’ from satellite imagery data. A prediction layer was then added to the trained model to output the probability that a given image was within each of those two classifications. If the probabilities were within one standard deviation of the mean of a gaussian distribution centered at 0.5, they would be stored in a separate dataset for Rapid Serial Visual Presentations (RSVP), implemented with PsyhoPy, to a human analyst using a low cost EMOTIV “Insight” EEG BCI headset. During the RSVP phase, hundreds of images per minute can be sequentially demonstrated. At such a pace, human analysts are not capable of making any conscious decisions about what is in each image; however, the subliminal “aha-moment” still can be detected by the headset. The discovery of these moments are parsed out by exposition of Event Related Potentials (ERPs), specifically the P300 ERPs. If a P300 ERP is generated for detection of a ship, then the relevant image would be moved to its rightful designation dataset; otherwise, if the image classification is still unclear, it is set aside for another RSVP iteration where the time afforded to the analyst for observation of each image is increased each time. If classification is still uncertain after a respectable amount of RSVP iterations, the images in question would be located within the grid matrix of its larger image scene. The adjacent images to those of interest on the grid would then be added to the presentation to give an analyst more contextual information via the expanded field of view. If classification is still uncertain, one final expansion of the field of view is afforded. Lastly, if somehow the classification of the image is indeterminable, the image is stored in an archive dataset.
机译:鉴于任何组织的人体GIS /图像分析师有限,使用他们的时间和组织资源很重要,特别是根据大量数据应用方案,当组织可能被大量的地理空间数据不堪重负时。目前的手稿致力于对实验研究的描述,概述了计算机对计算机执行任务的人机共生概念,例如在大型图像数据集上的分类,以及序列,人类使用脑计算机接口(BCI)进行分析分类机器学习困难的那些图像。添加BCI分析是利用大脑的能力更好地答案,如:“是这个图像中的物体是所寻求的物体吗?”为了确定这种系统的可行性,训练了监督的多层卷积神经网络(CNN),以检测来自卫星图像数据的“船只”和“船舶”和“没有船舶”之间的差异。然后将预测层添加到训练的模型中以输出给定图像在每个分类中的每个分类中的概率。如果概率在为0.5的高斯分布的平均值的一个标准偏差范围内,它们将存储在使用Psyhopy的快速串行视觉演示(RSVP)的单独数据集中,以使用低成本EMODIV的人类分析师“洞察力“EEG BCI耳机。在RSVP阶段,可以顺序地证明每分钟数百图像。在这样的步伐中,人类分析师无法对每个图像中的内容作出任何有意识的决定;然而,耳机仍然可以检测到潜司内“AHA矩”。通过阐述事件相关电位(ERP),特别是P300 ERP的发现,解析了这些时刻的发现。如果生成用于检测船舶的P300ERP,则相关图像将被移动到其正确的指定数据集;否则,如果图像分类仍然不清楚,则将其留出另一个RSVP迭代,其中每次增加对分析师的分析师的时间被增加。如果在可受众的RSVP迭代量之后仍然不确定,则所讨论的图像将位于其较大图像场景的网格矩阵内。然后将相邻的图像与网格上的感兴趣的图像添加到演示文稿中,以通过扩展的视野提供分析师更多的上下文信息。如果分类仍然不确定,则提供了一个最终扩展的视野。最后,如果图像的分类是不确定性的,则图像存储在存档数据集中。

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