Kato Talita, Mastelini Saulo Martiello, Campos Gabriel Fillipe Centini, Barbon Ana Paula Ayub da Costa, Prudencio Sandra Helena, Shimokomaki Massami, Soares Adriana Lourenço, Barbon Sylvio
Department of Food Science and Technology, State University of Londrina (UEL), Campus Universitário, Londrina PR 86057-970, Brazil.
Department of Computer Science, State University of Londrina (UEL), Campus Universitário, Londrina PR 86057-970, Brazil.
Asian-Australas J Anim Sci. 2019 Jul;32(7):1015-1026. doi: 10.5713/ajas.18.0504. Epub 2018 Nov 28.
The objective of this study was to evaluate three different degrees of white striping (WS) addressing their automatic assessment and customer acceptance. The WS classification was performed based on a computer vision system (CVS), exploring different machine learning (ML) algorithms and the most important image features. Moreover, it was verified by consumer acceptance and purchase intent.
The samples for image analysis were classified by trained specialists, according to severity degrees regarding visual and firmness aspects. Samples were obtained with a digital camera, and 25 features were extracted from these images. ML algorithms were applied aiming to induce a model capable of classifying the samples into three severity degrees. In addition, two sensory analyses were performed: 75 samples properly grilled were used for the first sensory test, and 9 photos for the second. All tests were performed using a 10-cm hybrid hedonic scale (acceptance test) and a 5-point scale (purchase intention).
The information gain metric ranked 13 attributes. However, just one type of image feature was not enough to describe the phenomenon. The classification models support vector machine, fuzzy-W, and random forest showed the best results with similar general accuracy (86.4%). The worst performance was obtained by multilayer perceptron (70.9%) with the high error rate in normal (NORM) sample predictions. The sensory analysis of acceptance verified that WS myopathy negatively affects the texture of the broiler breast fillets when grilled and the appearance attribute of the raw samples, which influenced the purchase intention scores of raw samples.
The proposed system has proved to be adequate (fast and accurate) for the classification of WS samples. The sensory analysis of acceptance showed that WS myopathy negatively affects the tenderness of the broiler breast fillets when grilled, while the appearance attribute of the raw samples eventually influenced purchase intentions.
本研究的目的是评估三种不同程度的白条现象(WS),并对其进行自动评估和消费者接受度调查。基于计算机视觉系统(CVS)对WS进行分类,探索不同的机器学习(ML)算法和最重要的图像特征。此外,还通过消费者接受度和购买意愿进行了验证。
由训练有素的专家根据视觉和硬度方面的严重程度对用于图像分析的样本进行分类。使用数码相机获取样本,并从这些图像中提取25个特征。应用ML算法旨在诱导出一个能够将样本分类为三个严重程度等级的模型。此外,进行了两项感官分析:第一次感官测试使用75个适当烤制的样本,第二次使用9张照片。所有测试均使用10厘米混合享乐量表(接受度测试)和5点量表(购买意愿)进行。
信息增益指标对13个属性进行了排序。然而,仅一种类型的图像特征不足以描述该现象。支持向量机、模糊-W和随机森林分类模型显示出最佳结果,总体准确率相似(86.4%)。多层感知器的表现最差(70.9%),在正常(NORM)样本预测中错误率较高。接受度的感官分析证实,WS肌病在烤制时会对鸡胸肉的质地产生负面影响,而生样本的外观属性会影响生样本的购买意愿得分。
所提出的系统已被证明适用于WS样本的分类(快速且准确)。接受度的感官分析表明,WS肌病在烤制时会对鸡胸肉的嫩度产生负面影响,而生样本的外观属性最终会影响购买意愿。