Comparative Analysis of Banana Detection Models

Abdul Haris Rangkuti, Varyl Hasbi Athala, Sian Lun Lau, Rudi Aryanto
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Abstract

This study aims to compare and evaluate the performance of banana detection models utilizing deep learning techniques and the Darknet algorithm. The objective is to identify the most effective approach for accurately detecting bananas in various real- world scenarios. The analysis involves training and testing multiple models using different datasets and evaluating their performance based on precision, recall, and overall accuracy. The results provide valuable insights into the strengths and weaknesses of each approach, enabling researchers and practitioners to make informed decisions when implementing banana detection systems. To detect banana objects, several convolutional neural network (CNN) models were used, including MobileNetV2, YOLOv3-Nano, YOLO Fastest 1.1, YOLOv3-tiny-PRN, YOLOv4-tiny, YOLOv7, and DenseNet121-YOLOv3. The training process utilizes the Darknet algorithm to facilitate the identification of banana types/classes captured by a camera, resulting in an MP4 film file. In this research, various experiments were carried out using different CNN models. However, these six models achieve optimal accuracy above 80%. Among them, the YOLOv7 model shows the highest average accuracy (MAP) at 100%, followed by the small model YOLOv4 at 92%. Meanwhile, for performance measurements, the accuracy of the YOLOv4-tiny model was 87%, followed by the YOLOv7 model at 84%. In the banana fruit experiment, several models showed very good performance, such as recognition of the Ambon, Kepok, and Emas banana classes up to 100% using the YOLOv7 and YOLOv4-tiny models. The YOLOv7 model itself can recognize other banana classes up to 100% in the Barangan, Rjbulu, Uli, and Tanduk classes. Furthermore, theYOLOv4-tiny model can recognize other banana classes, up to 90% of the Barangan, Rjbulu, Rjsereh, and Uli banana types. Thus, this experiment provides very good average accuracy results on 2 CNN models, namely YOLOv7 and YOLOv4-tiny. Future research will involve grouping pictures of bananas, which produces different image shapes, so it requires a different way to recognize them. It is hoped that this research can become a basis for further research in this field.
香蕉检测模型比较分析
本研究旨在比较和评估利用深度学习技术和暗网算法的香蕉检测模型的性能。目的是找出在各种现实场景中准确检测香蕉的最有效方法。分析包括使用不同数据集训练和测试多个模型,并根据精确度、召回率和总体准确度评估其性能。分析结果为了解每种方法的优缺点提供了有价值的见解,使研究人员和从业人员在实施香蕉检测系统时能做出明智的决定。为了检测香蕉物体,我们使用了多个卷积神经网络 (CNN) 模型,包括 MobileNetV2、YOLOv3-Nano、YOLO Fastest 1.1、YOLOv3-tiny-PRN、YOLOv4-tiny、YOLOv7 和 DenseNet121-YOLOv3。训练过程采用暗网算法,便于识别摄像机拍摄到的香蕉类型/类别,并生成 MP4 电影文件。在这项研究中,使用不同的 CNN 模型进行了各种实验。然而,这六个模型的最佳准确率都超过了 80%。其中,YOLOv7 模型的平均准确率(MAP)最高,达到 100%,其次是小型模型 YOLOv4,为 92%。同时,在性能测量方面,YOLOv4-小型模型的准确率为 87%,其次是 YOLOv7 模型的 84%。在香蕉果实实验中,几个模型都表现出了很好的性能,例如使用 YOLOv7 和 YOLOv4-tiny 模型对 Ambon、Kepok 和 Emas 香蕉类别的识别率高达 100%。YOLOv7 模型本身对 Barangan、Rjbulu、Uli 和 Tanduk 香蕉类别的识别率也高达 100%。此外,YOLOv4-tiny 模型也能识别其他香蕉类别,对 Barangan、Rjbulu、Rjsereh 和 Uli 香蕉类型的识别率高达 90%。因此,该实验为两个 CNN 模型(即 YOLOv7 和 YOLOv4-tiny)提供了非常好的平均准确度结果。未来的研究将涉及香蕉图片的分组,这将产生不同的图像形状,因此需要不同的识别方法。希望本研究能成为该领域进一步研究的基础。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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