Chilli Identification and Grading in pre/post-harvest Environment based on Computer vision and Deep Learning approaches

M. Sajjan, Lingangouda Kulkarni, B. Anami, N. B. Gaddagimath
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Abstract

Chilli, one of the spice produce, needs grading before being marketed for produce quality assurance. Manual chilli grading involves high labour cost, time-consuming, inconsistent, and expensive warranting technology intervention. In this work, a non-destructive approach to identify dry chilli images into three levels as good quality, medium quality and poor quality, using a deep learning architectures and grade them are adopted to reduce computation overload. The database of chilli grown in North Karnataka region is prepared as no standard chilli datasets are available. Dry chilli images dataset are augmented to train the dataset for transfer learning (DL) models, namely VGG16, ResNet and EfficientNet-D0 to analyse suitability of good model for the grading of chilli images. Further, work needs integration of the algorithm into automatic chilli grading tool. The proposed EfficentDet model is found suitable and yielded accuracy rate of 95.62% were in VGG16 and Resnet models accuracy was 82.67% and 83.88%. EfficientDet model out performs in terms of grading the dry chilli images.
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基于计算机视觉和深度学习方法的收获前后辣椒识别与分级
辣椒是一种香料产品,为了保证产品质量,在上市前需要分级。人工辣椒分级涉及高劳动力成本,耗时,不一致和昂贵的保证技术干预。在这项工作中,采用一种非破坏性的方法将干辣椒图像识别为优质,中等质量和差质量三个级别,使用深度学习架构并对它们进行分级以减少计算过载。由于没有标准的辣椒数据集,因此准备了北卡纳塔克邦地区种植的辣椒数据库。对干辣椒图像数据集进行扩充,训练迁移学习(DL)模型(VGG16、ResNet和EfficientNet-D0)的数据集,分析好模型对辣椒图像分级的适用性。此外,还需要将该算法集成到辣椒自动分级工具中。在VGG16和Resnet模型中,所提出的EfficentDet模型的准确率分别为82.67%和83.88%。effentdet模型在分级干辣椒图像方面表现出色。
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