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Predicting sensorial attribute scores of ornamental plants assessed in 3D through rotation on video by image analysis: A study on the morphology of virtual rose bushes

机译:通过图像分析旋转视觉三维评价观赏植物感官属性评分:虚拟玫瑰花丛形态研究

摘要

The visual appearance of a plant is tightly linked to its 3D architecture, and can be characterized by means of sensorial experiments. Providing a method to manage image features to predict objective visual traits of real or in silico ornamental plants seen and assessed in rotation, could be a valuable tool to take into account the 3D of the plants in order to reach faster, more faithful and more reproducible hedonic-free characterizations. The present study aims to present a simple approach to manage image data from rotating plant videos in order to predict some visual characteristics as beforehand determined through a non-hedonic sensory evaluation. It is proposed to implement plant morphometrical descriptors using common descriptive statistics computed from 2D features measured along the plant rotation with the aim to integrate the plant 3D. As a preliminary study to evaluate the potential of the proposed approach, the present experiment used virtual plants. First, a sensory profile on 20 virtual rose bushes videos for which 12 plant morphology-related sensory attributes were developed is presented. In parallel, 2D features from the video frames have been extracted considering an 8°-rotation interval and their discriminant power have been checked. Results showed that each sensory attributes presented at least one strong and significant linear relationship with a specific morphometrical descriptor (Pearson’s correlation coefficient ⩾0.8, p-values  0.001). A stepwise predictor selection procedure to design ordinary least squares (OLS) regression models allowed quite good modeling of the sensory attributes with no more than four morphometrical descriptors (adjusted R2 ⩾ 0.9). Regression on components and penalized models presented also good to acceptable fit, but model cross-validation (CV) and model complexity confirmed the relevance of the OLS models and their selected morphometrical descriptors (R2-CV ⩾ 0.9 and root mean square error of prediction 0.7) and strengthened the pertinence of transposing this image data management for experiments with real plants considering also their color characteristics thus achieving a proof of the concept.
机译:植物的视觉外观与其3D结构紧密相关,并且可以通过感官实验来表征。提供一种管理图像特征的方法来预测旋转观察和评估的真实或硅质观赏植物的客观视觉特征,可能是一种有价值的工具,可以考虑植物的3D以便更快,更忠实和更可重现无享乐的特征。本研究的目的是提出一种简单的方法来管理来自旋转植物视频的图像数据,以便预测通过非享乐感官评估预先确定的某些视觉特征。提议使用从沿植物旋转测量的2D特征计算的通用描述统计量来实现植物形态计量描述符,以集成植物3D。作为评估该方法潜力的初步研究,本实验使用虚拟植物。首先,介绍了20个虚拟玫瑰丛视频的感官概况,针对这些视频开发了12种植物形态相关的感官属性。并行地,考虑到8°旋转间隔从视频帧中提取2D特征,并检查了它们的判别力。结果显示,每种感官属性与特定的形态计量学描述词之间至少存在一种强而显着的线性关系(Pearson相关系数⩾0.8,p值<0.001)。设计普通最小二乘(OLS)回归模型的逐步预测器选择程序允许使用不超过四个形态计量学描述符(调整后的R2 0.9)对感觉属性进行很好的建模。组件和受罚模型的回归也很好地满足了可接受的拟合要求,但是模型交叉验证(CV)和模型复杂性证实了OLS模型及其所选形态计量描述子的相关性(R2-CV⩾0.9和预测的均方根误差< 0.7),并增强了将该图像数据管理用于真实植物实验的相关性,同时考虑了它们的颜色特征,从而获得了这一概念的证明。

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