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A Deep Object Detection Method for Pineapple Fruit and Flower Recognition in Cluttered Background

机译:一种深度对象检测方法,用于杂乱背景下的菠萝果实和花卉识别

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Natural initiation of pineapple flowers is not synchronized, which yields difficulties in yield prediction and the decision of harvest. Computer vision based pineapple detection system is an automated solution to address this issue. However, it is faced with significant challenges, e.g. pineapple flowers and fruits vary in size at different growing stages, the images are influenced by camera viewpoint, illumination conditions, occlusion and so on. This paper presents an approach for pineapple fruit and flower recognition using a state-of-the-art deep object detection model. We collected images from pineapple orchard using three different cameras and selected suitable ones to create a dataset. The experimental results show promising detection performance, with an mAP of 0.64 and F_1 score of 0.69.
机译:菠萝花的自然启动不同步,从而产生难以提高产量预测和收获的决定。基于计算机视觉的菠萝检测系统是解决此问题的自动化解决方案。然而,它面临着重大挑战,例如,菠萝花和水果在不同的生长阶段的尺寸变化,图像受摄像头观点,照明条件,闭塞等的影响。本文采用了一种使用最先进的深对象检测模型的菠萝水果和花识别方法。我们使用三种不同的相机收集来自菠萝果园的图像,并选择合适的果园并选择合适的果园来创建数据集。实验结果表明有希望的检测性能,地图为0.64和F_1得分为0.69。

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