Data and Code for Hoof Lesion Detection in Lactating Holsteins: Part II. Development and On-Farm Validation of a Predictive Classification Model Using Autonomous Camera System Data Compared to Passive Surveillance
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2023-11-01
2025-07-31
2025-07-31
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2026-02-18
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Swartz, Drew
swart205@umn.edu
swart205@umn.edu
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Data and code for evaluating a machine learning model and external validation for detecting cows with hoof lesions.
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Swartz, Drew; Rendahl, Aaron; Cramer, Gerard. (2026). Data and Code for Hoof Lesion Detection in Lactating Holsteins: Part II. Development and On-Farm Validation of a Predictive Classification Model Using Autonomous Camera System Data Compared to Passive Surveillance. Retrieved from the Data Repository for the University of Minnesota (DRUM), https://hdl.handle.net/11299/278952.
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