一个多尺度点监督网络用于野外玉米流苏计数。

IF 7.6 1区 农林科学 Q1 AGRONOMY Plant Phenomics Pub Date : 2023-10-02 eCollection Date: 2023-01-01 DOI:10.34133/plantphenomics.0100
Haoyu Zheng, Xijian Fan, Weihao Bo, Xubing Yang, Tardi Tjahjadi, Shichao Jin
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引用次数: 2

摘要

玉米穗的准确计数对于监测作物生长和估计作物产量至关重要。最近,基于深度学习的对象检测方法已被用于此目的,其中根据检测到的边界框的数量来估计植物计数。然而,这些方法存在两个问题:(a)玉米穗的鳞片因不同距离和作物生长阶段的图像捕获而不同;和(b)流苏区域往往受到遮挡或复杂背景的影响,使得检测效率低下。在本文中,我们提出了一种多尺度lite注意力增强网络(MLAENet),该网络仅使用点级注释(即用点标记的对象)来计数野生玉米穗。具体而言,所提出的方法包括一个新的多列lite特征提取模块,该模块通过利用不同速率的多个扩张卷积来生成尺度相关的密度图,从而更有效地捕捉不同尺度的丰富上下文信息。此外,还提出了一个集成注意力策略的多特征增强模块,使模型能够区分流苏区域及其复杂背景。最后,设计了一个新的上采样模块up Block,通过在上采样过程中自动抑制网格效应来提高估计密度图的质量。在玉米流苏计数和无人机玉米流苏计数这两个公开可用的流苏计数数据集上进行的大量实验表明,与最先进的方法相比,所提出的MLAENet在计数精度和推理速度方面取得了显著优势。该型号可在https://github.com/ShiratsuyuShigure/MLAENet-pytorch/tree/main.
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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A Multiscale Point-Supervised Network for Counting Maize Tassels in the Wild.

Accurate counting of maize tassels is essential for monitoring crop growth and estimating crop yield. Recently, deep-learning-based object detection methods have been used for this purpose, where plant counts are estimated from the number of bounding boxes detected. However, these methods suffer from 2 issues: (a) The scales of maize tassels vary because of image capture from varying distances and crop growth stage; and (b) tassel areas tend to be affected by occlusions or complex backgrounds, making the detection inefficient. In this paper, we propose a multiscale lite attention enhancement network (MLAENet) that uses only point-level annotations (i.e., objects labeled with points) to count maize tassels in the wild. Specifically, the proposed method includes a new multicolumn lite feature extraction module that generates a scale-dependent density map by exploiting multiple dilated convolutions with different rates, capturing rich contextual information at different scales more effectively. In addition, a multifeature enhancement module that integrates an attention strategy is proposed to enable the model to distinguish between tassel areas and their complex backgrounds. Finally, a new up-sampling module, UP-Block, is designed to improve the quality of the estimated density map by automatically suppressing the gridding effect during the up-sampling process. Extensive experiments on 2 publicly available tassel-counting datasets, maize tassels counting and maize tassels counting from unmanned aerial vehicle, demonstrate that the proposed MLAENet achieves marked advantages in counting accuracy and inference speed compared to state-of-the-art methods. The model is publicly available at https://github.com/ShiratsuyuShigure/MLAENet-pytorch/tree/main.

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来源期刊
Plant Phenomics
Plant Phenomics Multiple-
CiteScore
8.60
自引率
9.20%
发文量
26
审稿时长
14 weeks
期刊介绍: Plant Phenomics is an Open Access journal published in affiliation with the State Key Laboratory of Crop Genetics & Germplasm Enhancement, Nanjing Agricultural University (NAU) and published by the American Association for the Advancement of Science (AAAS). Like all partners participating in the Science Partner Journal program, Plant Phenomics is editorially independent from the Science family of journals. The mission of Plant Phenomics is to publish novel research that will advance all aspects of plant phenotyping from the cell to the plant population levels using innovative combinations of sensor systems and data analytics. Plant Phenomics aims also to connect phenomics to other science domains, such as genomics, genetics, physiology, molecular biology, bioinformatics, statistics, mathematics, and computer sciences. Plant Phenomics should thus contribute to advance plant sciences and agriculture/forestry/horticulture by addressing key scientific challenges in the area of plant phenomics. The scope of the journal covers the latest technologies in plant phenotyping for data acquisition, data management, data interpretation, modeling, and their practical applications for crop cultivation, plant breeding, forestry, horticulture, ecology, and other plant-related domains.
期刊最新文献
From Images to Loci: Applying 3D Deep Learning to Enable Multivariate and Multitemporal Digital Phenotyping and Mapping the Genetics Underlying Nitrogen Use Efficiency in Wheat. Informed-Learning-Guided Visual Question Answering Model of Crop Disease. Coupling PROSPECT with Prior Estimation of Leaf Structure to Improve the Retrieval of Leaf Nitrogen Content in Ginkgo from Bidirectional Reflectance Factor Spectra. A Field-to-Parameter Pipeline for Analyzing and Simulating Root System Architecture of Woody Perennials: Application to Grapevine Rootstocks. Estimating Leaf Nitrogen Accumulation Considering Vertical Heterogeneity Using Multiangular Unmanned Aerial Vehicle Remote Sensing in Wheat.
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