Neural Network Architecture Search Enabled Wide-Deep Learning (NAS-WD) for Spatially Heterogenous Property Awared Chicken Woody Breast Classification and Hardness Regression
Chaitanya Pallerla, Yihong Feng, Casey M. Owens, Ramesh Bahadur Bist,, Siavash Mahmoudi, Pouya Sohrabipour, Amirreza Davar, Dongyi Wang

TL;DR
This paper presents NAS-WD, a neural network architecture search method that optimizes a wide-deep neural network for accurate classification of woody breast conditions and hardness regression in chicken fillets using hyperspectral imaging.
Contribution
The study introduces NAS-WD, a novel neural architecture search approach that enhances classification and regression performance for poultry WB assessment using hyperspectral data.
Findings
Classification accuracy of 95% for WB levels.
Regression correlation coefficient of 0.75.
Outperforms traditional machine learning models.
Abstract
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…
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Taxonomy
TopicsIndustrial Vision Systems and Defect Detection · Spectroscopy and Chemometric Analyses
