HybridTransferNet: soil image classification through comprehensive evaluation for crop suggestion

Chetan Raju, Ashoka Davanageri Virupakshappa, Ajay Prakash Basappa Vijaya
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Abstract

Soil image classification is a critical task within the realms of agriculture and environmental applications. In recent years, the integration of deep learning has sparked significant interest in image-based soil classification. Transfer learning, a well-established technique in image classification, involves finetuning a pre-trained model on a specific dataset. However, conventional transfer learning methods typically focus solely on fine-tuning the final layer of the pre-trained model, which may not suffice to attain high performance on a new task. HybridTransferNet, a unique hybrid transfer learning approach designed for soil classification based on images is proposed in this paper. HybridTransferNet goes beyond the conventional approach by finetuning not only the final layer but also a select number of earlier layers in a pre-trained ResNet50 model. This extension results in substantially enhanced ability to classify when compared to standard transfer learning methods. Our evaluation of HybridTransferNet, conducted on a soil classification dataset, encompasses the reporting of various performance indicators, such as the F1 score, recall, accuracy, and precision. Our findings from experiments highlight HybridTransferNet's advantages over conventional transfer learning strategies, establishing it as a state-of-the-art solution in the domain of soil classification.
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HybridTransferNet:通过综合评估进行土壤图像分类,为作物提供建议
土壤图像分类是农业和环境应用领域的一项重要任务。近年来,深度学习的整合引发了人们对基于图像的土壤分类的极大兴趣。迁移学习是一种成熟的图像分类技术,涉及在特定数据集上对预先训练好的模型进行微调。然而,传统的迁移学习方法通常只关注对预训练模型的最后一层进行微调,这可能不足以在新任务中实现高性能。本文提出的 HybridTransferNet 是一种独特的混合迁移学习方法,专为基于图像的土壤分类而设计。HybridTransferNet 不仅对最后一层进行了微调,还对预先训练的 ResNet50 模型中的若干早期层进行了微调,从而超越了传统方法。与标准迁移学习方法相比,这种扩展大大提高了分类能力。我们在土壤分类数据集上对 HybridTransferNet 进行了评估,包括报告各种性能指标,如 F1 分数、召回率、准确率和精确度。我们的实验结果凸显了 HybridTransferNet 相对于传统迁移学习策略的优势,使其成为土壤分类领域最先进的解决方案。
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