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Deep localization model for intra-row crop detection in paddy field

机译:稻田中行作物检测深度定位模型

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Automated and precise rice plant localization is crucial for the mechanization of rice production, which can facilitate targeted spraying, site-specific fertilization, and mechanized weeding etc. Existing approaches adopted thus far have mainly focused on inter-row weed detection or rice seedling row detection. Nevertheless, techniques for intra-row individual rice plant positioning continue to face major challenges induced by the specific paddy field environments or complex morphology of rice plant. This paper proposed a new deep localization network for intra-row rice detection at the single plant level in a paddy field. This method designed a two-stage model. The module in stage 1 identified potential locations containing rice plants in the entire image. The module in stage 2 predicted the confidence of rice plant identification and refined the corresponding box bounds. The two-stage processing modules shared a deep backbone network for learning full-image convolutional features and are combined into a unified framework to facilitate an end-to-end training. In addition, we constructed a rice plant detection dataset and proposed a task-oriented evaluation method for performance verification of the algorithm. Experiment results showed the proposed deep model achieved a high localization accuracy of 93.22% and a high testing speed of 15 fps, verifying the effectiveness and efficiency of the method. Using this method, we can develop techniques for finer-level agriculture production, such as spraying and weed control, to achieve healthy and economical rice yields.
机译:自动化和精确的水稻植物定位对于大米生产的机械化至关重要,这可以促进目标喷涂,特异性施肥和机械化除草等。目前所采用的现有方法主要集中在行中杂草检测或稻米幼苗排检测。尽管如此,针对行内单个稻植物定位的技术继续面临特定稻田环境或水稻植物复杂形态引起的重大挑战。本文提出了一种新的稻田中植物中稻米检测的深层定位网络。该方法设计了一个两级模型。第1阶段中的模块识别含有整个图像中的米植物的潜在位置。阶段2中的模块预测了水稻植物识别的置信度并改进了相应的盒子边界。两阶段处理模块共享深骨干网络,用于学习全图像卷积功能,并将其组合成统一的框架,以便于端到端培训。此外,我们构建了一种稻田检测数据集,并提出了一种面向任务的评估方法,用于算法的性能验证。实验结果表明,拟议的深度模型实现了高93.22%的高分化精度和15 FP的高测试速度,验证了该方法的有效性和效率。使用这种方法,我们可以开发用于更精细的农业生产的技术,如喷涂和杂草控制,实现健康和经济的水稻产量。

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