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Learning Models for Concept Extraction From Images With Drug Labels for a Unified Knowledge Base Utilizing NLP and IoT Tasks

机译:利用NLP和IOT任务的统一知识库概念提取学习模型

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The evolution of humankind is through the exchange of information and extraction of knowledge from available information. The process of exchange of the information differs by the probability of the medium through which the information is exchanged. The Internet of things (IoT) contains millions of devices with sensors simultaneously transferring real time information to devices as rapid streams of data that need to be processed on the go. This leads to the need for development of effective and efficient approaches for segregating data based on class, relatedness, and differences in the information. The extraction of text from images is performed through tesseract irrespective of the language. SCIBERT models to extract scientific information and evaluating on a suite of tasks specially in classifying drugs based on free data (tweets, images, etc.). The images and text-based semantic similarity analysis provide similar drugs grouped together by composition or manufacturer.
机译:人类的演变是通过信息交流和提取知识从可用信息。信息交换过程与介质的概率不同,通过交换信息的概率。事物互联网(IOT)包含数百万设备,其中具有传感器,同时将实时信息传送到设备,作为需要在GO上处理的快速数据流。这导致开发基于类别,相关性和差异的分离数据的有效和有效的方法。无论语言如何,通过TESERACT提取图像的文本的提取。 SCIBERT模型提取科学信息并在基于自由数据(推文,图像等)的分类药物的套件上进行评估。基于图像和文本的语义相似性分析提供了组合物或制造商组合在一起的类似药物。

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