深度学习分解机器对专门的数据集进行空间信息处理的时间最小化

V. Tymchuk, V. Lytvyn, Oleksandr Perehuda
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引用次数: 0

摘要

为了有效的军事管理,在数据不断增长的条件下,创建自动化工具综合体,主要是整合空间信息处理系统,是一项优先任务,需要收集、传输、存储、处理和使用这些数据。空间信息整合处理问题涉及信息来源的多样性、数据格式的多样性、获取和使用方式的多样性、处理方式的多样性等。所有这些都意味着一个极其复杂的组织和技术结构,一种“系统的系统”。深度学习机器(DLM)保证了预测的高准确性。但是这样的DLM应该与存在时间限制和空间不足的军事使用条件相匹配。因此,为深度学习机器的最大精度创建数据集的努力取决于计算资源(在普通研究中有可能克服,但在军事领域则不然)。在军事应用任务中,时间标准和克服对抗带来的不确定性至关重要。这让我们提出了在深度学习机器中不可能达到绝对精度的假设。因此,对于可变的战术情况,建议创建专门的数据集,并使用统一空间信息处理系统的分解方法从每个迭代步骤(或它们的组合)中获得最大的效率。分析了深度学习机的科学技术解决方法和现有战术情况下数据类型系统化的方法。最后,本文提出了基于深度学习机和一组专用数据集的检测识别系统。103级的每个专门数据集的容量使信息处理过程具有超高的速度,并且允许一个人在不需要过多的组织和时间要求的情况下建立这样一个空间信息综合处理系统。数据集本身被显示出来。这种形成数据集或其集合的原理允许获得高精度和高速的检测和识别系统。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
The decomposition of the deep learning machine for specialized datasets for time minimizing of spatial information processing
For effective military management, the creation of complexes of automation tools, spatial information processing systems, primarily consolidated, is a priority task in the conditions of constant growth of data and requirements for their collection, transmission, storage, processing and use. The problem of consolidated processing of spatial information is related to the diversity of sources, the diversity of data formats, the diversity of acquisition and use, the diversity of processing etc. All that imply an extremely complex organizational and technical structure, a kind of ‘system of systems’. Deep Learning Machine (DLM) ensure the high accuracy of prediction. But such DLM should be matched for the military conditions of the usage where time restrictions and space lack are present. So, the effort to create a dataset for the maximum accuracy of the Deep Learning Machine rests on computing resources (in common research it is possible to overcome but in military sphere it isn’t). In military applied tasks, the criterion of time and overcoming uncertainties due to confrontation are critical. This allows us to put forward the hypothesis that it is impossible to achieve absolute accuracy in deep learning machine. Therefore, for variable tactical situations, it is advisable to create specialized datasets and achieve maximum efficiency from each iteration step (or their combination) using the decomposition method of the consolidated spatial information processing system. It is analysed the methods of scientific and technical solutions in the deep learning machine and the method of systematizing data types in existing tactical situations. In the end the detection and recognition system with a deep learning machine and a set of specialized datasets is proposed in the paper. The volume of each specialized dataset at the level of 103 enables ultra-high speed of information processing processes and allows a person to set up such a system of consolidated processing of spatial information without excessive organizational and time demands. The dataset itself is revealed. This principle of forming a dataset, or their sets, allows obtaining high-accurate and high -fast detection and recognition systems.
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