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Systems and methods for automated inferencing of changes in spatio-temporal images

机译:自动推断时空图像变化的系统和方法

摘要

The present disclosure addresses the technical problem of enabling automated inferencing of changes in spatio-temporal images by leveraging the high level robust features extracted from a Convolutional Neural Network (CNN) trained on varied contexts instead of data dependent feature methods. Unsupervised clustering on the high level features eliminates the cumbersome requirement of labeling the images. Since models are not trained on any specific context, any image may be accepted. Real time inferencing is enabled by a certain combination of unsupervised clustering and supervised classification. A cloud-edge topology ensures real time inferencing even when connectivity is not available by ensuring updated classification models are deployed on the edge. Creating a knowledge ontology based on adaptive learning enables inferencing of an incoming image with varying levels of precision. Precision farming may be an application of the present disclosure.
机译:本公开解决了通过利用从在不同上下文上训练的卷积神经网络(CNN)中提取的高级鲁棒特征而不是依赖于数据的特征方法来实现时空图像的变化的自动推断的技术问题。高级功能上的无监督聚类消除了标注图像的繁琐需求。由于未在任何特定背景下训练模型,因此可以接受任何图像。实时推理是通过无监督聚类和有监督分类的某种组合实现的。云边缘拓扑结构通过确保在边缘上部署了更新的分类模型,即使在连接不可用时也可确保实时推理。基于自适应学习创建知识本体可以以不同的精度推断出输入图像。精确耕作可以是本公开的应用。

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