In this paper, we present a novel approach to kiwi fruit flower detection using Deep Neural Networks (DNNs) to build an accurate, fast, and robust autonomous pollination robot system. Recent work in deep neural networks has shown outstanding performance on object detection tasks in many areas. Inspired this, we aim for exploiting DNNs for kiwi fruit flower detection and present intensive experiments and their analysis on two state-of-the-art object detectors; Faster R-CNN and Single Shot Detector (SSD) Net, and feature extractors; Inception Net V2 and NAS Net with real-world orchard datasets. We also compare those approaches to find an optimal model which is suitable for a real-time agricultural pollination robot system in terms of accuracy and processing speed. We perform experiments with dataset collected from different seasons and locations (spatio-temporal consistency) in order to demonstrate the performance of the generalized model. The proposed system demonstrates promising results of 0.919, 0.874, and 0.889 for precision, recall, and F1-score respectively on our real-world dataset, and the performance satisfies the requirement for deploying the system onto an autonomous pollination robotics system.
翻译:在本文中,我们介绍了利用深神经网络(DNNs)来建立准确、快速和稳健自主授粉机器人系统的新颖方法,以建立准确、快速和稳健的自主授粉机器人系统;在深神经网络中最近开展的工作表明,在许多领域,物体探测任务方面表现突出;为此,我们的目标是利用DNNs进行 ⁇ 果花探测,并对两个最先进的物体探测器进行密集实验和分析; 更快的R-CNN和单一射击探测器(SSD)网和地物提取器; 以真实世界或焦炭数据集接受Net V2和NAS Net; 我们还比较了这些方法,以找到一个在精确和处理速度方面适合实时农业授粉机器人系统的最佳模型; 我们利用从不同季节和地点收集的数据集(时空一致性)进行实验,以展示通用模型的性能; 拟议的系统显示,在实际世界的机器人化系统中,精确、回顾和F1核心数据系统分别需要0.919、0.874和0.889和0.889的希望结果。