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The botanical origin of honey significantly impacts its nutritional composition, quality, and price. Traditional identification methods are often complex, require expensive equipment, and are time-consuming. This article proposes a rapid detection method for the botanical origin of honey based on an electronic tongue (ET) and hyperspectral imaging (HSI) combined with a CNN-transformer fusion model. First, gustatory and spectral data of honey samples from different botanical origins are collected by ET and HSI systems, respectively. A CNN-transformer fusion model is proposed to perform feature extraction, information interaction, and pattern recognition on the collected ET and HSI data. This model employs a dual-path CNN-transformer to capture local and global features of ET and HSI signals at different scales. A multi-scale interaction module is designed to enhance cross-modal communication and facilitate information sharing between the ET and HSI information. Finally, the contrastive information bottleneck (CIB) module is adopted to optimize mutual information through contrastive learning and enable the integration of ET and HSI features for classification and recognition. The experimental results demonstrate that this method achieves superior recognition accuracy in classifying and identifying honey botanical origin compared to that using either the ET or HSI alone. Its experimental mean test set accuracy, precision, recall, and F1 score reached 99.08%, 99.09%, 99.05%, and 0.9906, respectively. This study provides a new detection method for the botanical source of different kinds of honey, which has a promising application in honey and other food industries.
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http://dx.doi.org/10.1039/d4ay02222j | DOI Listing |
IEEE Trans Image Process
January 2025
CNNs have demonstrated superior performance in medical image segmentation. To overcome the limitation of only using local receptive field, previous work has attempted to integrate Transformers into convolutional network components such as encoders, decoders, or skip connections. However, these methods can only establish long-distance dependencies for some specific patterns and usually neglect the loss of fine-grained details during downsampling in multi-scale feature extraction.
View Article and Find Full Text PDFMed Biol Eng Comput
August 2025
The Department of Molecular and Cellular Biology, Center for Brain Science, Harvard University, Cambridge, MA, USA.
Accurate segmentation of lung adenocarcinoma nodules in computed tomography (CT) images is critical for clinical staging and diagnosis. However, irregular nodule shapes and ambiguous boundaries pose significant challenges for existing methods. This study introduces STU-Net, a hybrid CNN-Transformer architecture designed to enhance feature extraction, fusion, and global context modeling.
View Article and Find Full Text PDFPlants (Basel)
July 2025
College of Mechanical and Electrical Engineering, Gansu Agricultural University, Lanzhou 730070, China.
To address the challenges of low recognition accuracy and substantial model complexity in crop disease identification models operating in complex field environments, this study proposed a novel hybrid model named ConvTransNet-S, which integrates Convolutional Neural Networks (CNNs) and transformers for crop disease identification tasks. Unlike existing hybrid approaches, ConvTransNet-S uniquely introduces three key innovations: First, a Local Perception Unit (LPU) and Lightweight Multi-Head Self-Attention (LMHSA) modules were introduced to synergistically enhance the extraction of fine-grained plant disease details and model global dependency relationships, respectively. Second, an Inverted Residual Feed-Forward Network (IRFFN) was employed to optimize the feature propagation path, thereby enhancing the model's robustness against interferences such as lighting variations and leaf occlusions.
View Article and Find Full Text PDFFront Oncol
July 2025
Department of Radiology, Zhuzhou Hospital Affiliated to Xiangya' School of Medicine, Central South University, Zhuzhou, China.
Background: Accurate and automated segmentation of pancreatic tumors from CT images via deep learning is essential for the clinical diagnosis of pancreatic cancer. However, two key challenges persist: (a) complex phenotypic variations in pancreatic morphology cause segmentation models to focus predominantly on healthy tissue over tumors, compromising tumor feature extraction and segmentation accuracy; (b) existing methods often struggle to retain fine-grained local features, leading to performance degradation in pancreas-tumor segmentation.
Methods: To overcome these limitations, we propose SMF-Net (Semantic-Guided Multimodal Fusion Network), a novel multimodal medical image segmentation framework integrating a CNN-Transformer hybrid encoder.
Anal Methods
July 2025
School of Computer Science and Technology, Shandong University of Technology, Zibo 255049, Shandong, China.
The botanical origin of honey significantly impacts its nutritional composition, quality, and price. Traditional identification methods are often complex, require expensive equipment, and are time-consuming. This article proposes a rapid detection method for the botanical origin of honey based on an electronic tongue (ET) and hyperspectral imaging (HSI) combined with a CNN-transformer fusion model.
View Article and Find Full Text PDF