论文标题
DeepCorn:一种半监督的深度学习方法,用于基于图像的高通量图像玉米内核计数和产量估计
DeepCorn: A Semi-Supervised Deep Learning Method for High-Throughput Image-Based Corn Kernel Counting and Yield Estimation
论文作者
论文摘要
现代农业和植物育种的成功依赖于准确有效的数据收集。对于管理大量农作物的商业组织而言,收集准确和一致的数据是一种瓶颈。由于时间和人工的有限,精确表型作物以记录颜色,头部计数,身高,体重等。但是,这些信息以及其他遗传和环境因素相结合,对于开发新的高级农作物物种至关重要,有助于养活世界上不断增长的人口。机器学习的最新进展,尤其是深度学习,已经显示出减轻这种瓶颈的希望。在本文中,我们提出了一种新颖的深度学习方法,用于计算现场的可耳玉米内核,以帮助收集实时数据,并最终改善决策以最大程度地提高产量。我们将这种方法命名为DeepCorn,并表明该框架在各种条件下都有坚固耐用。 DeepCorn估计玉米耳朵图像中玉米内核的密度,并根据估计的密度图预测核的数量。 DeepCorn使用截短的VGG-16作为特征提取的骨干,并合并来自网络多个尺度的地图,以使其与图像量表变化具有鲁棒性。我们还采用了半监督的学习方法,进一步提高了我们提出的方法的性能。我们提出的方法分别完成了玉米内核计数任务中41.36和60.27的MAE和RMSE。我们的实验结果表明,与其他最先进的方法相比,我们提出的方法的优势和有效性。
The success of modern farming and plant breeding relies on accurate and efficient collection of data. For a commercial organization that manages large amounts of crops, collecting accurate and consistent data is a bottleneck. Due to limited time and labor, accurately phenotyping crops to record color, head count, height, weight, etc. is severely limited. However, this information, combined with other genetic and environmental factors, is vital for developing new superior crop species that help feed the world's growing population. Recent advances in machine learning, in particular deep learning, have shown promise in mitigating this bottleneck. In this paper, we propose a novel deep learning method for counting on-ear corn kernels in-field to aid in the gathering of real-time data and, ultimately, to improve decision making to maximize yield. We name this approach DeepCorn, and show that this framework is robust under various conditions. DeepCorn estimates the density of corn kernels in an image of corn ears and predicts the number of kernels based on the estimated density map. DeepCorn uses a truncated VGG-16 as a backbone for feature extraction and merges feature maps from multiple scales of the network to make it robust against image scale variations. We also adopt a semi-supervised learning approach to further improve the performance of our proposed method. Our proposed method achieves the MAE and RMSE of 41.36 and 60.27 in the corn kernel counting task, respectively. Our experimental results demonstrate the superiority and effectiveness of our proposed method compared to other state-of-the-art methods.