Grape Yield Prediction using Deep Learning Regression Model

D. Barbole, Parul M. Jadhav
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引用次数: 2

Abstract

Grape is considered as a cash-crop throughout the world. As compared to other fruits, shape of every grape cluster is different from each other. The change in region of grape cluster with respect to image size is sparse in nature and hence involves lot of errors. So it's a bit challenging to find shape and estimate weight of grape cluster using modern algorithms as well. In this paper, we proposed a deep learning regression model with combination of basic structures of U-net, VGG-16 and attention modules. The sequence combinations of layers such as convolution layers, max-pooling layers and average pooling layers along with concatenation operations are the main characteristics of these models. This model is capable of predicting weight of grape clusters present in images with a reduced error.
基于深度学习回归模型的葡萄产量预测
葡萄在全世界被认为是一种经济作物。与其他水果相比,每一串葡萄的形状都是不同的。葡萄簇区域相对于图像大小的变化本质上是稀疏的,因此涉及到很多误差。所以用现代算法来寻找葡萄簇的形状和估计葡萄簇的权重是有点挑战性的。本文提出了一种结合U-net、VGG-16和注意力模块基本结构的深度学习回归模型。卷积层、最大池化层和平均池化层等层的序列组合以及串联操作是这些模型的主要特征。该模型能够以较小的误差预测图像中葡萄簇的权重。
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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