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Fruit recognition based on convolution neural network

机译:基于卷积神经网络的果实识别

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摘要

Computer vision is widely used at present. However, fruit recognition is still a problem for the stacked fruits on weighing scale because of complexity and overlap. In this paper, a fruit recognition algorithm based on convolution neural network(CNN) is proposed. At first the image regions are extracted using selective search algorithm, then the regions have been selected by means of an entropy of fruit images, and finally these regions are regarded as input of CNN neural network for training and recognition. The final decision is made based on a fusion of all region classifications using voting mechanism. In order to achieve the actual application in supermarket, we have considered the variety of fruit, stack of fruits, the changes of fruit number and position, and have made a multifarious training set of fruits. After the network has been trained with an optimal training set, it has obtained a remarkable recognition rates for the fruits stacked on a weighing scale.
机译:计算机视觉目前广泛使用。然而,由于复杂性和重叠,果实识别仍然是堆叠的果实对堆积规模上的问题。本文提出了一种基于卷积神经网络(CNN)的果实识别算法。首先,使用选择性搜索算法提取图像区域,然后通过果实图像的熵选择区域,最后,这些区域被认为是CNN神经网络的输入,用于训练和识别。最终决定是基于使用投票机制的所有区域分类的融合来进行的。为了实现超市的实际应用,我们考虑了各种水果,堆栈的水果,水果数量和位置的变化,并制作了一种多种训练套的水果。在网络训练后,通过最佳训练训练,它已经获得了堆叠在称重秤上的果实的显着识别率。

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