Abstract

The pineapple is an essential fruit in Taiwan. Farmers separate pineapples into two types, according to the percentages of water in the pineapples. One is the “drum sound pineapple” and the other is the “meat sound pineapple”. As there is more water in the meat sound pineapple, the meat sound pineapple more easily rots and is more challenging to store than the drum sound pineapple. Thus, farmers need to filter out the meat sound pineapple, so that they can sell pineapples overseas. The classification, based on striking the pineapple fruit with rigid objects (e.g., plastic rulers) is most commonly used by farmers due to the negligibly low costs and availability. However, it is a time-consuming job, so we propose a method to automatically classify pineapples in this work. Using embedded onboard computing processors, servo, and an ultrasonic sensor, we built a hitting machine and combined it with a conveyor to automatically separate pineapples. To classify pineapples, we proposed a method related to acoustic spectrogram spectroscopy, which uses acoustic data to generate spectrograms. In the acoustic data collection step, we used the hitting machine mentioned before and collected many groups of data with different factors; some groups also included the noise in the farm. With these differences, we tested our deep learning-based convolutional neural network (CNN) performances. The best accuracy of the developed CNN model is 0.97 for data Group V. The proposed hitting machine and the CNN model can assist in the classification of pineapple fruits with high accuracy and time efficiency.

Highlights

  • The results show that, no matter what the materials of the drumstick were—a plastic ruler or iron ruler—the accuracy can be high if the model is tested by the same dataset, so that both materials can be used in our hitting machine; the plastic ruler is still the better chose for the hitting machine, because the iron is too heavy for a servo to swing it

  • We proposed a method related to acoustic spectrograms, which use acoustic data to generate spectrograms

  • The spectrograms were used as input to the convolutional neural network (CNN)

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Summary

Introduction

The pineapple is an essential fruit in Taiwan [1]. Under the Taiwan Council of Agriculture, Executive Yuan, farmers planted 7819 hectares of pineapples and gained. 407,822 metric tons in 2021 [2], which makes the pineapple the most abundant fruit in Taiwan. Most pineapples are planted in southern Taiwan (e.g., in Nantou, JiaYi, Tainan, Gaoxiong, and Pingdong). Farmers can harvest fruits after 18 months. When pineapples contain too much water, they rot more . The drum sound pineapple looks light yellow. It has a sweet-and-sour taste, and it smells better. The meat sound pineapple looks dark yellow [3]. As the meat sound pineapple contains more water than the drum sound pineapple, it cannot be stored too long

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