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Computer vision detection of foreign objects in walnuts using deep learning

机译:深入学习的核桃外物体的计算机视觉检测

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摘要

Detection of foreign objects is crucial for quantitative image analysis in numerous food quality and safety inspection applications. Rapid detection of foreign objects in walnuts using computer vision still faces challenge due to the irregular shapes and complex features of foreign objects. Some detection methods require application specific transforms, expertly designed constraints and model parameters, and have limited detection performance due to their maintenance costs. In recent years, deep learning has become a focus in different research fields, because methods based on deep learning are able to directly learn features from training data. In this study, we apply two different convolutional neural network structures to walnut images for automatically segmenting images and detecting different-sized natural foreign objects (e.g., flesh leaf debris, dried leaf debris and gravel dust) and man-made foreign objects (e.g., paper scraps, packing material, plastic scraps and metal parts). The proposed deep-learning method is simpler because it avoids extracting features manually, and overcomes the conglomeration phenomenon between walnuts and foreign objects in actual images. The proposed method is able to correctly segment 99.5% of the object regions in the 101 test images and to correctly classify 95% of the foreign objects in the 277 validation images. The segmentation and detection processing time of each image was less than 50 ms. Future work will focus on deep learning using multi-waveband imaging hardware and fast on-line inspection control for the equipment and robots.
机译:异物检测对于许多食品质量和安全检查应用中的定量图像分析至关重要。由于异物的不规则形状和复杂的特征,使用计算机视觉快速检测核桃中的异物仍然面临挑战。一些检测方法需要特定于应用程序的变换,专业设计的约束和模型参数,并且由于其维护成本而具有有限的检测性能。近年来,深入学习已成为不同研究领域的重点,因为基于深度学习的方法能够直接从训练数据学习功能。在这项研究中,我们将两个不同的卷积神经网络结构应用于核桃图像以自动分割图像并检测不同尺寸的天然异物(例如,肉叶碎片,干燥的碎片碎片和砾石灰尘)和人造的异物(例如,纸屑,包装材料,塑料废料和金属部件)。所提出的深度学习方法更简单,因为它避免了手动提取特征,并克服了实际图像中核桃和异物之间的集团现象。所提出的方法能够在101测试图像中正确地段99.5%的对象区域,并在277验证图像中正确分类95%的异物。每个图像的分割和检测处理时间小于50ms。未来的工作将专注于利用多波段成像硬件和设备和机器人的快速在线检测控制的深度学习。

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