Yan Chen, Chenchen Xu, Peng Zhang, Xianhui Peng, Dandan Fu, Zhigang Hu
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引用次数: 0
摘要
家禽部位分割技术的研究对家禽自动化分割设备的发展至关重要。为了满足不同尺寸家禽的实时、精确分割需求,本研究提出了一种基于轻量级DeepLabv3+的鸡肉部位语义分割方法。最初,骨干网络被改进的轻量级MobileNetV2取代,提高了预测速度并减少了计算参数。随后,SENet被纳入,增强了识别高级特征和否定无关信息的能力。此外,在解码器中集成了两个不同尺度的浅特征层,增加了浅特征的丰富度,减少了分割边缘的不准确性。最后,结合Dice Loss和Cross Entropy Loss (CE Loss)函数来最小化正负样本之间的不平衡。实验结果表明,轻量级DeepLabv3+将原始模型的MIoU (Mean Intersection over Union)和MPA (Mean Pixel Accuracy)分数分别提高了5.42%和3%,检测速度提高了1.89倍。值得注意的是,模型大小仅为原始模型的10.95%,这表明分割精度和检测速度有了实质性的提高。因此,该算法可能为不同家禽的自动分割提供一定的技术见解。
A Semantic Segmentation Method for Segmenting Chicken Parts Based on a Lightweight DeepLabv3+
Research on poultry part partitioning techniques is crucial for the advancement of automated poultry partitioning equipment. In this study, a semantic segmentation method for chicken parts, based on a lightweight DeepLabv3+, was introduced to cater to real-time and precise requirements of segmenting varying poultry sizes. Initially, the backbone network was replaced with an improved lightweight MobileNetV2, enhancing the predictive speed and decreasing computational parameters. Subsequently, the SENet was incorporated, enhancing the capacity to discern high-level features and negate irrelevant information. Furthermore, two shallow feature layers of different scales were integrated into the decoder, augmenting the richness of shallow features and mitigating inaccuracies at segmentation edges. Finally, the Dice Loss and Cross Entropy Loss (CE Loss) functions were combined to minimize the imbalance between positive and negative samples. Experimental findings demonstrated that the lightweight DeepLabv3+ improved the MIoU (Mean Intersection over Union) and MPA (Mean Pixel Accuracy) scores of the original model by 5.42% and 3%, respectively, and amplified the detection speed by 1.89 times. Remarkably, the model size was a mere 10.95% of the original, indicating substantial enhancements in segmentation accuracy and detection speed. Therefore, the proposed algorithm could potentially provide certain technical insights for automatic segmentation of different poultry.
期刊介绍:
This international research journal focuses on the engineering aspects of post-production handling, storage, processing, packaging, and distribution of food. Read by researchers, food and chemical engineers, and industry experts, this is the only international journal specifically devoted to the engineering aspects of food processing. Co-Editors M. Elena Castell-Perez and Rosana Moreira, both of Texas A&M University, welcome papers covering the best original research on applications of engineering principles and concepts to food and food processes.