多模式快速识别莫氏藻的生长阶段并判别其生长状态

IF 6.3 Q1 AGRICULTURAL ENGINEERING Smart agricultural technology Pub Date : 2024-07-15 DOI:10.1016/j.atech.2024.100507
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引用次数: 0

摘要

我们介绍了一种莫西菌多模态快速鉴定和生长状态判别方法。根据小球藻独特的生物学特性和生长环境要求,通过集成多模态信息获取技术,实现了对小球藻关键生长阶段的高效、准确识别。在对小球藻生长阶段的快速识别过程中,采用了多阶段视觉增强位置编码视觉变换器(MS-EP ViT)模型。通过引入多级输入嵌入、增强位置编码和优化的变换器编码层,该模型在识别不同生长阶段的莫切拉蘑菇方面的性能得到了显著提高。在莫切拉蘑菇生长状态多模态判别方法中,整合了文本和图像模态,设计了基于卷积神经网络(NSCT Mask R-CNN)的非低采样轮廓变换掩膜区域模型,并探索了将非低采样轮廓变换(NSCT)特征与环境特征相结合的多模态特征提取策略。该策略有效地实现了对象检测和实例分割的目标,从而准确地评估了桑树菌后期、幼菇期和成熟期的生长状况。实验结果表明,两个模型在识别准确率和稳定性方面都有显著提高,超参数设置的合理性也通过收敛性和参数敏感性实验得到了验证。总之,我们提供了一种更准确、更高效的莫西菌生长监测识别方法,有助于更好地了解莫西菌的生长情况,为优化莫西菌的生长环境提供科学依据。
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Multimodal rapid identification of growth stages and discrimination of growth status for Morchella

We introduce a multimodal rapid identification and growth status discrimination method for morchella. Based on the unique biological characteristics and growth environmental requirements of morchella, the efficient and accurate identification of key growth stages of morchella is achieved through the integration of multimodal information acquisition technology. During the rapid identification process of the growth stage of Morchella, the Multi Stage Vision Enhanced Position Encoding Vision Transformer (MS-EP ViT) model is adopted. By introducing multi-stage input embedding, enhanced position encoding, and optimized Transformer Encoder layers, the performance of the model in identifying different growth stages of Morchella mushrooms is significantly improved. In the multimodal Morchella growth state discrimination method, text and image modalities are integrated, a Non downsampled Contourlet Transform Mask Region based Convolutional Neural Network (NSCT Mask R-CNN) model is designed, and a multimodal feature extraction strategy combining Non downsampled Contourlet Transform (NSCT) features with environmental features is explored. This strategy effectively achieves the goals of object detection and instance segmentation, and thus we have accurately evaluated the growth status of Morchella in the later stages of mulberry, young mushroom, and mature. The experimental results show that both models have achieved significant improvements in recognition accuracy and stability, and the rationality of hyperparameter settings has been verified through convergence and parameter sensitivity experiments. Overall, we provide a more accurate and efficient identification method for monitoring the growth of Morchella, which helps to better understand the growth of Morchella and provides scientific basis for optimizing its growth environment.

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