leped - net:一种用于种子排序的轻量级高效金字塔扩展卷积网络

Weijie Li, Pingsun Wei, Jun Sun, Xiaoting Xiao, X. Mu, Zhenghui Hu
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引用次数: 0

摘要

为了实现长期的经济增长、竞争力和可持续性,在种子纯度分选方面,速度和准确性是关键要求。然而,目前的种子排序方法存在模型参数多、计算量大的问题,这给实时应用的部署带来了很大的挑战,特别是在资源有限的设备上。为了解决上述问题,本文提出了一种具有金字塔扩展卷积的轻量级高效网络LEPD-Net,用于种子排序。首先,设计残差空间金字塔模块(RSPM),利用不同扩张率的扩张卷积放大感受野的结构特征,有效提取多尺度特征;然后采用深度可分卷积来减少模型参数的数量和计算复杂度。此外,为了进一步提高性能,引入了一种新型的轻量级坐标关注模块,该模块利用局部跨通道交互获取各通道的关注值,增强了网络对种子关键特征的学习能力。最后,通过学习到的特征完成种子排序任务。实验结果表明,该方法在玉米数据集和红芸豆数据集上的准确率分别达到96.00%和97.25%。参数数仅为0.26M,远低于目前最先进的网络(如MobileNetv2、Shufflenetv2、PPLC-Net)。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
LEPD-Net: A Lightweight Efficient Network with Pyramid Dilated Convolution for Seed Sorting
To achieve long-term economic growth, competitiveness, and sustainability, speed and accuracy are the key requirements when it comes to seed purity sorting. However, current seed sorting methods suffer from large number of model parameters and computational complexity, make it a great challenge to deploy them in real-time applications, especially on devices with limited resources. To issue above problems, in this paper, a lightweight efficient network with pyramid dilated convolution, namely LEPD-Net, is proposed for seed sorting. First, a residual spatial pyramid module (RSPM) is elaborately designed, which uses dilated convolution with different dilation rates to enlarge the structural characteristics of the receptive field and effectively extracts multi-scale features. Then the depth-wise separable convolution to reduce the amount of model parameters and the computational complexity. In addition, to further improve the performance, a novel lightweight coordinate attention module is introduced, which uses the local cross-channel interaction to obtain the attention value of each channel and strengthen the network's ability to learn seed key features. Finally, the seed sorting task is completed through the learned features. Experimental results show that our proposed method achieves an accuracy of 96.00% and 97.25% on the Maize dataset and Red Kidney Bean dataset, respectively. The number of parameters is only 0.26M, which is far less than state-of-the-art networks (e.g., MobileNetv2, Shufflenetv2, and PPLC-Net).
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