Margherita Caccamo
University of Pennsylvania
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Featured researches published by Margherita Caccamo.
Journal of Dairy Science | 2011
G. Azzaro; Margherita Caccamo; James D. Ferguson; Sebastiano Battiato; Giovanni Maria Farinella; Giuseppe Claudio Guarnera; Giovanni Puglisi; R. Petriglieri; G. Licitra
Body condition score (BCS) is considered an important tool for management of dairy cattle. The feasibility of estimating the BCS from digital images has been demonstrated in recent work. Regression machines have been successfully employed for automatic BCS estimation, taking into account information of the overall shape or information extracted on anatomical points of the shape. Despite the progress in this research area, such studies have not addressed the problem of modeling the shape of cows to build a robust descriptor for automatic BCS estimation. Moreover, a benchmark data set of images meant as a point of reference for quantitative evaluation and comparison of different automatic estimation methods for BCS is lacking. The main objective of this study was to develop a technique that was able to describe the body shape of cows in a reconstructive way. Images, used to build a benchmark data set for developing an automatic system for BCS, were taken using a camera placed above an exit gate from the milking robot. The camera was positioned at 3 m from the ground and in such a position to capture images of the rear, dorsal pelvic, and loin area of cows. The BCS of each cow was estimated on site by 2 technicians and associated to the cow images. The benchmark data set contained 286 images with associated BCS, anatomical points, and shapes. It was used for quantitative evaluation. A set of example cow body shapes was created. Linear and polynomial kernel principal component analysis was used to reconstruct shapes of cows using a linear combination of basic shapes constructed from the example database. In this manner, a cows body shape was described by considering her variability from the average shape. The method produced a compact description of the shape to be used for automatic estimation of BCS. Model validation showed that the polynomial model proposed in this study performs better (error=0.31) than other state-of-the-art methods in estimating BCS even at the extreme values of BCS scale.
Communications to SIMAI Congress | 2007
Gaetano Impoco; Sergio Carrato; Margherita Caccamo; Laura Tuminello; G. Licitra
Dairy Science & Technology | 2013
Stefania La Terra; Vita Maria Marino; Iris Schadt; Margherita Caccamo; G. Azzaro; Stefania Carpino; G. Licitra
Animal Feed Science and Technology | 2014
Teresa Rapisarda; Catia Pasta; Stefania Carpino; Margherita Caccamo; Maria Ottaviano; G. Licitra
Archive | 2010
Sebastiano Battiato; Giovanni Maria Farinella; G. C. Guarnera; G. Puglisi; G. Azzaro; Margherita Caccamo; G. Licitra; James D. Ferguson
Journal of Machine Learning Research | 2010
Sebastiano Battiato; Giovanni Maria Farinella; Giuseppe Claudio Guarnera; Giovanni Puglisi; G. Azzaro; Margherita Caccamo
生命科学(ISSN1934-7391) | 2011
Anthony Ojokoh; Yimin Wei; Rim Ben Younes; Moez Ayadi; Taha Najar; Margherita Caccamo; Iris Schadt; Moncef Ben Mrad; Akinduti Paul Akinniyi; Akinbo John Adeolu; Adenuga W. Funmilayo; Ejilude Oluwaseun; Ogunbileje John Olusegun
Archive | 2011
Rim Ben Younes; Moez Ayadi; Taha Najar; Margherita Caccamo; Iris Schadt
Joint ADSA-CSAS-ASAS Annual Meeting | 2009
G. Azzaro; Margherita Caccamo; James D. Ferguson; Sebastiano Battiato; Giovanni Maria Farinella; Giuseppe Claudio Guarnera; Giovanni Puglisi; G. Licitra
Archive | 2019
G. Licitra; Margherita Caccamo; Sylvie Lortal