School of Surveying and Mapping Land Information Engineering, Henan Polytechnic University, Jiaozuo 454000, China.
Sensors (Basel). 2021 Jul 16;21(14):4845. doi: 10.3390/s21144845.
The number of wheat ears is an essential indicator for wheat production and yield estimation, but accurately obtaining wheat ears requires expensive manual cost and labor time. Meanwhile, the characteristics of wheat ears provide less information, and the color is consistent with the background, which can be challenging to obtain the number of wheat ears required. In this paper, the performance of Faster regions with convolutional neural networks (Faster R-CNN) and RetinaNet to predict the number of wheat ears for wheat at different growth stages under different conditions is investigated. The results show that using the Global WHEAT dataset for recognition, the RetinaNet method, and the Faster R-CNN method achieve an average accuracy of 0.82 and 0.72, with the RetinaNet method obtaining the highest recognition accuracy. Secondly, using the collected image data for recognition, the of RetinaNet and Faster R-CNN after transfer learning is 0.9722 and 0.8702, respectively, indicating that the recognition accuracy of the RetinaNet method is higher on different data sets. We also tested wheat ears at both the filling and maturity stages; our proposed method has proven to be very robust (the is above 90). This study provides technical support and a reference for automatic wheat ear recognition and yield estimation.
小麦穗数是小麦产量和估产的重要指标,但准确获取小麦穗数需要昂贵的人工成本和劳动时间。同时,小麦穗的特征提供的信息较少,且颜色与背景一致,这使得获取所需的小麦穗数变得具有挑战性。本文研究了 Faster regions with convolutional neural networks (Faster R-CNN) 和 RetinaNet 在不同条件下不同生长阶段的小麦预测穗数的性能。结果表明,使用 Global WHEAT 数据集进行识别时,RetinaNet 方法和 Faster R-CNN 方法的平均准确率分别为 0.82 和 0.72,RetinaNet 方法的识别准确率最高。其次,使用采集的图像数据进行识别时,迁移学习后的 RetinaNet 和 Faster R-CNN 的 分别为 0.9722 和 0.8702,表明 RetinaNet 方法在不同数据集上的识别准确率更高。我们还在灌浆期和成熟期对小麦穗进行了测试,证明了我们提出的方法具有很强的鲁棒性(准确率均在 90%以上)。本研究为小麦穗自动识别和产量估测提供了技术支持和参考。