首页> 外文期刊>Network Daily News >Xijing University Researcher Publishes New Studies and Findings in the Area of Pattern Recognition and Artificial Intelligence (Lightweight Convolution Neural Network Based on Multi-Scale Parallel Fusion for Weed Identification)
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Xijing University Researcher Publishes New Studies and Findings in the Area of Pattern Recognition and Artificial Intelligence (Lightweight Convolution Neural Network Based on Multi-Scale Parallel Fusion for Weed Identification)

机译:Xijing University研究人员在模式识别和人工智能领域(基于多尺度平行融合杂草识别的轻量级卷积神经网络)发表了新的研究和发现)

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By a News Reporter-Staff News Editor at Network Daily News – Investigators publish new report on pattern recognition and artificial intelligence. According to news reporting out of Xijing University by NewsRx editors, research stated, “Accurate identification of weed species is the premise for controlling weeds in field.” The news reporters obtained a quote from the research from Xijing University: “But it is a challenging task due to the complexity and high-dimensional nonlinearity of the weed images in natural field. Convolutional neural networks (CNNs) model has been widely applied to image identification, but most of the CNNs models have the problems of large parameters, low identification accuracy, and single feature scale. This paper presents a novel deep neural network structure, named as MPF-Net for weed species identification. In MPF-Net, firstly, the weed images is sent into two different scales of depthwise separable convolution layers; secondly, the parallel output feature information is cross-fused, and uses the residual learning structure to increase the network model depth and feature extraction ability; finally the lightweight model PL-Model and the scale reduction module SR-Model are stacked together to construct the lightweight network.”
机译:由Network Daily News的新闻记者播放器新闻编辑 - 调查人员发布了有关模式识别和人工智能的新报告。根据NewsRX编辑的新闻报道,研究指出:“对杂草物种的准确识别是控制野外杂草的前提。”新闻记者从Xijing University的研究中获得了一句话:“但是由于自然领域中杂草图像的复杂性和高维非线性,这是一项具有挑战性的任务。卷积神经网络(CNN)模型已广泛应用于图像识别,但是大多数CNNS模型都有大参数,低识别精度和单特征量表的问题。本文提出了一种新型的深神网络结构,称为MPF-NET,用于杂草鉴定。在MPF-NET中,首先,将杂草图像分为两个不同的可分离卷积层。其次,并行输出功能信息交叉融合,并使用剩余学习结构来提高网络模型的深度和特征提取能力;最后,将轻型模型PL模型和比例还原模块SR模型堆叠在一起以构建轻量级网络。”

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    《Network Daily News》 |2022年第30期|41-41|共1页
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  • 正文语种 英语
  • 中图分类 TP-778;
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