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A system for classifying vegetative structures on coffee branches based on videos recorded in the field by a mobile device

机译:一种用于基于移动设备在现场记录的视频对咖啡树枝上的营养结构进行分类的系统

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As a drink, coffee is one of the most in demand products worldwide; as an agricultural product, it requires non-destructive tools for its monitoring and control. In order to create a non-destructive method which can be used in the field, a system was developed to find and classify six types of vegetative structures on coffee branches: leaves, stems, flowers, unripe fruits, semi-ripe fruits, and ripe fruits. Videos were obtained from 12 coffee branches in field conditions, using the rear camera of a mobile device. Approximately 90 frames, those which had the most information from the scene, were selected from each video. Next, a three-dimensional (3D) reconstruction was generated using the Structure from Motion (SfM) and Patch-based Multi-view Stereo (PMVS) techniques for each branch. All acquired images were manually recorded, and a Ground Truth point cloud was generated for each branch. The generated point clouds were filtered using a statistical outliers filter, in order to eliminate noise generated in the 3D reconstruction process. The points that were located in the deepest part were considered to be the scene background, and were removed using a band-pass filter. Point clouds were sub-sampled using a VoxelGrid filter, to reduce the number of points to 50% and therefore reduce computation time of the processes that followed. Various two-dimensional (2D) and 3D features were taken from the point clouds: 11 based on RGB, Lab, Luv, YCbCr, and HSV color space, four based on curvatures, and the remaining two based on shape and curvedness indexes. A Support Vector Machine (SVM) was trained with the previously mentioned features by using eight branches for the training stage, and four branches for the validation stage. Experimental results showed a precision of 0.82 and a recall of 0.79, when classifying said vegetative structures. The proposed system is economical, as only a mobile device is needed to obtain information. Remaining system processes were performed offline. Additionally, the system developed was not affected by changes in lighting conditions, when recording videos on a coffee plantation. (C) 2017 Elsevier Ltd. All rights reserved.
机译:作为饮料,咖啡是全球最受欢迎的产品之一。作为一种农产品,它需要无损监测和控制工具。为了创建一种可在野外使用的非破坏性方法,开发了一种系统,用于查找和分类咖啡树枝上的六种营养结构:叶,茎,花,未成熟的水果,半成熟的水果和成熟的水果。使用移动设备的后置摄像头在现场条件下从12个咖啡分支获取了视频。从每个视频中选择了大约90帧,这些帧具有来自场景的最多信息。接下来,针对每个分支,使用“运动结构”(SfM)和基于补丁的多视图立体声(PMVS)技术生成三维(3D)重建。手动记录所有采集的图像,并为每个分支生成一个地面真相点云。使用统计离群值滤波器对生成的点云进行滤波,以消除3D重建过程中生成的噪声。位于最深部分的点被视为场景背景,并使用带通滤波器将其删除。使用VoxelGrid滤波器对点云进行了子采样,以将点数减少到50%,从而减少了后续过程的计算时间。从点云中获取了各种二维(2D)和3D特征:11个基于RGB,Lab,Luv,YCbCr和HSV色彩空间,四个基于曲率,其余两个基于形状和弯曲度指标。通过在训练阶段使用八个分支,在验证阶段使用四个分支,对支持向量机(SVM)进行了上述功能的训练。实验结果表明,在对上述植物结构进行分类时,其精度为0.82,召回率为0.79。所提出的系统是经济的,因为仅需要移动设备来获取信息。其余系统进程是脱机执行的。此外,在咖啡种植园录制视频时,开发的系统不受光照条件变化的影响。 (C)2017 Elsevier Ltd.保留所有权利。

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