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YOLO-Tomato: A Robust Algorithm for Tomato Detection Based on YOLOv3

机译:YOLO-Tomato:一种基于YOLOv3的鲁棒番茄检测算法

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摘要

Automatic fruit detection is a very important benefit of harvesting robots. However, complicated environment conditions, such as illumination variation, branch, and leaf occlusion as well as tomato overlap, have made fruit detection very challenging. In this study, an improved tomato detection model called YOLO-Tomato is proposed for dealing with these problems, based on YOLOv3. A dense architecture is incorporated into YOLOv3 to facilitate the reuse of features and help to learn a more compact and accurate model. Moreover, the model replaces the traditional rectangular bounding box (R-Bbox) with a circular bounding box (C-Bbox) for tomato localization. The new bounding boxes can then match the tomatoes more precisely, and thus improve the Intersection-over-Union (IoU) calculation for the Non-Maximum Suppression (NMS). They also reduce prediction coordinates. An ablation study demonstrated the efficacy of these modifications. The YOLO-Tomato was compared to several state-of-the-art detection methods and it had the best detection performance.
机译:自动水果检测是收获机器人的一个非常重要的好处。但是,复杂的环境条件(例如光照变化,分支和叶子遮挡以及番茄重叠)使水果检测非常具有挑战性。在这项研究中,基于YOLOv3,提出了一种改进的番茄检测模型YOLO-Tomato,用于处理这些问题。 YOLOv3中集成了密集的体系结构,以促进功能的重用并帮助学习更紧凑,更准确的模型。此外,该模型用圆形定界框(C-Bbox)替换了传统的矩形定界框(R-Bbox),以进行番茄定位。然后,新的边界框可以更精确地匹配西红柿,从而改善非最大抑制量(NMS)的“联合上方相交”(IoU)计算。它们还减少了预测坐标。消融研究证明了这些修饰的功效。将YOLO-Tomato与几种最先进的检测方法进行了比较,它具有最佳的检测性能。

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