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Robust classification approach for segmentation of blood defects in cod fillets based on deep convolutional neural networks and support vector machines and calculation of gripper vectors for robotic processing

机译:基于深卷积神经网络的COD圆角分割血液缺陷分割的鲁棒分类方法及夹钳矢量夹具矢量计算

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Despite advances in computer vision and segmentation techniques, the segmentation of food defects such as blood spots, exhibiting a high degree of randomness and biological variation in size and coloration degree, has proven to be extremely challenging and it is not successfully resolved. Therefore, in this paper, we propose an approach for robust automated pixel-wise classification for segmentation of blood spots, focusing specifically on challenging texture-uniform cod fish fillets. A multimodal vision system, described in this paper, enables perfectly aligned RGB and D-depth images for localization of segmented blood spots in 3D. Classification models based on (1) Convolutional Neural Networks - CNN and (2) Support Vector Machines - SVM for the classification of defective fillets were developed. A colour based, pixel-wise and SVM-based model was developed for accurate segmentation and localisation of blood spots resulting in 96% overall accuracy when tested on whole fillet images. Classification between normal and defective fillets based on GPU (Graphical Processing Unit)- accelerated CNN classification model achieved 100% accuracy, versus the SVM-based model achieving 99%. We present a novel data augmentation approach that desensitizes the CNN towards shape features and makes the CNN to focus more on colour. We show how pixel-wise classification is,used for an accurate localization of blood spots in 3D space and calculation of resulting 3D gripper vectors, as an input to robotic processing. (C) 2017 Elsevier B.V. All rights reserved.
机译:尽管计算机视觉和分割技术进行了进展,但血斑等食物缺陷的分割,表现出高度随机性和尺寸和着色度的生物变化,已被证明是极具挑战性的,并且它没有成功解决。因此,在本文中,我们提出了一种用于血斑分割的鲁棒自动化像素明智分类的方法,专注于具有挑战性的纹理均匀的鳕鱼片。本文中描述的多模态视觉系统使得能够完全对准RGB和D深图像以便在3D中定位分段血斑。开发了基于(1)卷积神经网络的分类模型 - CNN和(2)支持向量机 - 用于分类缺陷圆角的SVM。开发了一种基于颜色的,像素 - WISE和SVM的模型,用于精确分割和血斑定位,在整个圆角图像上测试时导致96%的总体精度。基于GPU(图形处理单元) - 加速CNN分类模型的正常和有缺陷圆角之间的分类实现了100%的精度,与基于SVM的模型实现了99%。我们提出了一种新的数据增强方法,将CNN朝向形状特征脱敏,使CNN更加聚焦颜色。我们展示了像素明智的分类如何,用于3D空间中血斑的精确定位和结果3D夹具矢量的计算,作为机器人处理的输入。 (c)2017 Elsevier B.v.保留所有权利。

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