Neural Network Architecture Search Enabled Wide-Deep Learning (NAS-WD) for Spatially Heterogenous Property Awared Chicken Woody Breast Classification and Hardness Regression
Due to intensive genetic selection for rapid growth rates and high broiler yields in recent years, the global poultry industry has faced a challenging problem in the form of woody breast (WB) conditions. This condition has caused significant economic losses as high as $200 million annually, and the...
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Zusammenfassung: | Due to intensive genetic selection for rapid growth rates and high broiler
yields in recent years, the global poultry industry has faced a challenging
problem in the form of woody breast (WB) conditions. This condition has caused
significant economic losses as high as $200 million annually, and the root
cause of WB has yet to be identified. Human palpation is the most common method
of distinguishing a WB from others. However, this method is time-consuming and
subjective. Hyperspectral imaging (HSI) combined with machine learning
algorithms can evaluate the WB conditions of fillets in a non-invasive,
objective, and high-throughput manner. In this study, 250 raw chicken breast
fillet samples (normal, mild, severe) were taken, and spatially heterogeneous
hardness distribution was first considered when designing HSI processing
models. The study not only classified the WB levels from HSI but also built a
regression model to correlate the spectral information with sample hardness
data. To achieve a satisfactory classification and regression model, a neural
network architecture search (NAS) enabled a wide-deep neural network model
named NAS-WD, which was developed. In NAS-WD, NAS was first used to
automatically optimize the network architecture and hyperparameters. The
classification results show that NAS-WD can classify the three WB levels with
an overall accuracy of 95%, outperforming the traditional machine learning
model, and the regression correlation between the spectral data and hardness
was 0.75, which performs significantly better than traditional regression
models. |
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DOI: | 10.48550/arxiv.2409.17210 |