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Broiler stunned state detection based on an improved fast region-based convolutional neural network algorithm

机译:基于改进的基于快速区域的卷积神经网络算法的肉鸡震惊状态检测

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摘要

An improved fast region-based convolutional neural network (RCNN) algorithm is proposed to improve the accuracy and efficiency of recognizing broilers in a stunned state. The algorithm recognizes 3 stunned state conditions: insufficiently stunned, moderately stunned, and excessively stunned. Image samples of stunned broilers were collected from a slaughter line using an image acquisition platform. According to the format of PASCAL VOC (pattern analysis, statistical modeling, and computational learning visual object classes) dataset, a dataset for each broiler stunned state condition was obtained using an annotation tool to mark the chicken head and wing area in the original image. A rotation and flip data augmentation method was used to enhance the effectiveness of the datasets. Based on the principle of a residual network, a multi-layer residual module (MRM) was constructed to facilitate more detailed feature extraction. A model was then developed (entitled here Faster-RCNN+MRMnet) and used to detect broiler stunned state conditions. When applied to a reinforcing dataset containing 27,828 images of chickens in a stunned state, the identification accuracy of the model was 98.06%. This was significantly higher than both the established back propagation neural network model (90.11%) and another Faster-RCNN model (96.86%). The proposed algorithm can complete the inspection of the stunned state of more than 40,000 broilers per hour. The approach can be used for online inspection applications to increase efficiency, reduce labor and cost, and yield significant benefits for poultry processing plants.
机译:提出了一种改进的快速区域的卷积神经网络(RCNN)算法,以提高震动状态识别肉鸡的准确性和效率。该算法识别3个惊呆的状态条件:不充分震动,中度惊呆,并且过度震动。使用图像采集平台从屠宰线收集刺耳的肉鸡的图像样本。根据Pascal VOC的格式(图案分析,统计建模和计算学习视觉对象类)数据集,使用注释工具获得每个肉鸡震动状态条件的数据集,以标记原始图像中的鸡头和翼区域。旋转和翻转数据增强方法用于增强数据集的有效性。基于残余网络的原理,构建了多层残余模块(MRM)以促进更详细的特征提取。然后开发了一种模型(这里有权更快的-RCNN + MRMNET)并用于检测肉鸡震动状态条件。当施加到具有27,828个鸡图像的增强数据集中在震惊的状态下时,该模型的鉴定准确性为98.06%。这显着高于建立的背部传播神经网络模型(90.11%)和另一个更快的RCNN模型(96.86%)。所提出的算法可以完成每小时超过40,000个肉鸡的震惊状态的检查。该方法可用于在线检查应用以提高效率,降低劳动力和成本,并为家禽加工厂产生显着的益处。

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