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Advancements in greenhouse spike detection: Leveraging deep learning and attention mechanisms for enhanced phenotypic trait analysis

03.18.24 | Nanjing Agricultural University The Academy of Science

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Accurate extraction of phenotypic traits from image data is essential for cereal crop research, but spike detection in greenhouses is challenging due to the environmental and physical similarities between spikes and leaves. Recent efforts include increasing image resolution and feature dimensionality, and developing neural networks such as SpikeSegNet to improve spike detection. However, these methods struggle to accurately localise small spikes,and further advances in neural network tuning and novel detection models are needed to efficiently overcome these spike detection challenges.

In January 2024, Plant Phenomics published a research article entitled by “ High-throughput spike detection in greenhouse cultivated grain crops with attention mechanisms based deep learning models ”.

In this study, three deep neural networks (DNNs) – FRCNN, FRCNN-A, and Swin Transformer were implemented and trained for spike detection in cereal crops. The networks were optimized using the SGD optimizer, with training times varying between the models; FRCNN required 900 to 1200 epochs, FRCNN-A 800 to 1000 epochs, and Swin Transformer 2500 to 3000 epochs. A dynamic learning rate strategy was used to optimize model convergence, demonstrating the effectiveness of the models in detecting spikes of varying difficulty, particularly within dense leaf mass.

The results showed that the Swin Transformer outperformed the other models in terms of accuracy without data transformation or augmentation. The FRCNN-A model, augmented with an attention module, showed significant improvement over the original FRCNN, highlighting the potential for further improvements in the FRCNN-A architecture. The ability of the attention module to capture the hierarchical context of regions of interest was particularly noted for its effectiveness in detecting challenging spike patterns.

Training on nine datasets from two phenotyping facilities showed that all models improved in accuracy as the original image content in the training sets increased. The Swin Transformer demonstrated the highest mean average precision (mAP) across different training sets, indicating its superior ability to extract features and detect spikes. However, the study also highlighted that while the Swin Transformer provides high accuracy, the FRCNN-A provides a more efficient and faster training alternative, especially beneficial for datasets with similar characteristics.

The results emphasized the importance of the models' adaptability to augmented images and their performance on a specific IPK test set, highlighting the potential of these advanced architectures to improve spike detection in mixed wheat varieties. The study concluded that the modified FRCNN-A, with its reduced number of convolutional layers and the addition of an attention module, together with the computationally intensive Swin Transformer, represent significant advances in the detection of small-scale objects in complex optical scenes. These innovations promise improved accuracy and efficiency in phenotyping tasks, although the trade-off between inference time and accuracy remains a consideration for real-time applications.

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References

Authors

Sajid Ullah *1 2 4 , Klara Panzarova 4 , Martin Trtilek 4 , Matej Lexa 3 , Vojtech Macala 3 , Kerstin Neumann 5 , Thomas Altmann 5 , Jan Hejatko 1 2 , Marketa Pernisova 1 2 , and Evgeny Gladilin 5

Affiliations

1 Mendel Centre for Plant Genomics and Proteomics, Central European Institute of Technology (CEITEC), Masaryk University, Brno, Czech Republic

2 National Centre for Biomolecular Research, Faculty of Science, Masaryk University, Brno, Czech Republic

3 Faculty of Informatics, Masaryk University, Botanicka 68a, Brno, Czech Republic

4 Photon Systems Instruments, spol. s r.o., Drasov, Czech Republic

5 Leibniz Institute of Plant Genetics and Crop Plant Research, Gatersleben, Germany

Plant Phenomics

10.34133/plantphenomics.0155

Experimental study

Not applicable

High-throughput spike detection in greenhouse cultivated grain crops with attention mechanisms based deep learning models

21-Jan-2024

The authors declare that they have no competing interests.

Keywords

Article Information

Contact Information

Ping Wang
Nanjing Agricultural University The Academy of Science
pingwang@njau.edu.cn

Source

How to Cite This Article

APA:
Nanjing Agricultural University The Academy of Science. (2024, March 18). Advancements in greenhouse spike detection: Leveraging deep learning and attention mechanisms for enhanced phenotypic trait analysis. Brightsurf News. https://www.brightsurf.com/news/L596E2X8/advancements-in-greenhouse-spike-detection-leveraging-deep-learning-and-attention-mechanisms-for-enhanced-phenotypic-trait-analysis.html
MLA:
"Advancements in greenhouse spike detection: Leveraging deep learning and attention mechanisms for enhanced phenotypic trait analysis." Brightsurf News, Mar. 18 2024, https://www.brightsurf.com/news/L596E2X8/advancements-in-greenhouse-spike-detection-leveraging-deep-learning-and-attention-mechanisms-for-enhanced-phenotypic-trait-analysis.html.