卷积神经网络在咖啡胶囊计数回收系统中的应用

Henrique Wippel Parucker da Silva, G. B. Santos
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引用次数: 0

摘要

咖啡胶囊为咖啡的制备带来了实用性和速度。然而,随着它的普及,随之而来的是一个重大的环境问题,即产生了大量的垃圾,到2021年,估计有1.4万吨垃圾来自胶囊。为了避免这种处置,有必要回收它们,但这不是一项微不足道的工作,因为它们由各种材料组成,以及这些胶囊的收集提出了挑战。因此,收集系统非常有价值,除了自动化之外,还会根据丢弃胶囊的数量产生奖励。这项工作是专门对使用卷积神经网络检测咖啡胶囊的系统的开发进行初步测试。该算法使用两个图像集进行训练,其中一个包含反射图像,另一个包含无反射图像,准确率约为97%。
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Application of Convolutional Neural Network in Coffee Capsule Count Aiming Collection System for Recycling
The coffee capsules brought practicality and speed in the preparation of the drink. However, with its popularization came a major environmental problem, the generation of a large amount of garbage, which for 2021 has an estimated 14 thousand tons of garbage, only coming from the capsules. To avoid this disposal it is necessary to recycle them, however it is not a trivial job, since they are composed of various materials, as well as the collection of these capsules presents challenges. Therefore, a collection system is of great value, which, in addition to being automated, generates bonuses proportional to the quantity of discarded capsules. This work is dedicated preliminary tests on the development of such a system using a convolutional neural network for the detection of coffee capsules. This algorithm was trained with two image sets, one containing images with reflection and the other without, which presented an accuracy of approximately 97%.
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