基于卷积神经网络的人工智能垃圾识别与分类

F. Fahmi, Baharsyah Pratama Lubis
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引用次数: 3

摘要

印度尼西亚是世界上最大的垃圾生产国之一。每天都有垃圾没有扔进垃圾桶,那些已经扔到该扔的地方,但仍然不能区分垃圾的类型。一般来说,废物的类型之一是根据其性质,有些容易分解(有机),有些难以分解(无机)。本研究通过查看系统是否可以读取背景中每个位置的物体以及一个相框中物体的数量,引入了五种有机和无机废弃物。该系统使用Tensorflow为每个对象提供100个图像样本。根据对象的名称和类型为每个示例对象提供一个标识符。该样本为系统提供了一个标识符,以便从我们获取的数据对象中学习识别对象的模式和形状。结果表明,系统检测物体的平均准确率达到90%,其中对香蕉皮、树叶、草、纸板、泡沫塑料、碎玻璃、瓶子、罐头和钉子的数据准确率最高,达到99%。此外,作者尝试在同一帧中放置两个或多个不同的对象并产生平均百分比值为90%,以及同时在一帧中测试两个或多个相似的对象并产生平均百分比值为90%。从测试结果来看,草和瓶子对象是系统设计中没有读取错误的样本。为了在一个框架中测试两个或两个以上的对象,作者放置了两个相似的对象和两个不同类型的对象。结果表明,该系统能够识别出框架中的物体。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Identification and Sorting of Waste using Artificial Intelligence Based on Convolutional Neural Network
Indonesia is one of the biggest producers of waste in the world. Every day there is rubbish that is not thrown in the trash, those that have been thrown in its place but are still wrong in distinguishing the type of garbage. In general, one of the types of waste is based on its nature, some are easy to decompose (organic), and some are difficult to decompose (inorganic). This research introduces five organic and inorganic waste objects by seeing whether the system can read objects at every position in the background and the number of objects in 1 picture frame. This system uses Tensorflow with a sample of 100 images for each object. Each sample object is given an identifier according to the object’s name and type. The sample is given an identifier for the system to learn to recognize the patterns and shapes of objects from the data objects we take. The results showed that the average percentage of system accuracy in detecting objects reached 90%, with the highest data accuracy reaching 99% tested on the banana peel, leaves, grass, cardboard, styrofoam, broken glass, bottles, cans, and nails. Furthermore, the authors try to put two or more different objects in the same frame and produce an average percentage value of 90%, as well as testing two or more similar objects in one frame simultaneously and producing an average value of 90%. From the test results, grass and bottle objects are samples that do not have read errors in the system design. For testing two or more objects in one frame, the author puts two similar objects and objects of different types. The result is that the system can recognize objects in the frame.
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