面向制造与图像分类系统的物联网框架

Shivani Joshi, B. S, Poonam Rawat, Deepali Deshpande, M. Chakravarthi, Devvret Verma
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引用次数: 1

摘要

为了防止过度的能源使用和识别水污染,现在需要交替进行真正的过程工业检测和图片分类。科学家们正在寻找一种有限且高效的物联网(IoT)设备,用于检测和评估工业机械的实时状态,因为在经济行业中实施自动化通常是一项昂贵的项目。此外,物联网技术可用于对图像进行分类,以发现水污染。本研究比较了几种图像二元分类器,并描述了现在可访问的物联网的优势和价格。在反馈问卷意见的基础上,主要采用数值调查的方法收集相关数据。然后,采用“规范”选择方法对主要数据进行分析,支持比较评价。据研究和分析,物联网(iot)是一种不太先进的产品,可以包括在小型和大型工业企业中。为了识别水的污染,分类物联网已被证明是有效的,质地分析比空间分析更便宜。
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A Framework of Internet of Things (Iot) for the Manufacturing and Image Classification System
In order to prevent excessive energy usage and to identify water pollution, alternately, genuine process industry detection and picture categorization are now required. Scientists are looking for a limited and efficient IoT (Iot) device that would detect and assess the real-time state of industrial machinery since implementing automation in economic industries is often an expensive project. Additionally, the IoT technology may be used to classify images in order to find water contamination. This study has compared several picture binary classifiers and described the advantages and price of the IoT that is now accessible. On the basis of the opinions of returned questionnaires, a main numerical survey approach has been used to gather relevant data. After then, the “Normative” selecting method was used to analyse the main data and support a comparative evaluation. Internet of things iot (Sensor Networks) is a less advanced product that can be included into both small- and large-scale industrial businesses, according to research and analysis. For identifying contamination of water, classification IoT has been shown to be effective, and texture analysis is less expensive than spatial analysis.
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