The slaughterhouse is widely recognised as a useful checkpoint for assessing the health status of livestock. At the moment, this is implemented through the application of scoring systems by human experts. The automation of this process would be extremely helpful for veterinarians to enable a systematic examination of all slaughtered livestock, positively influencing herd management. However, such systems are not yet available, mainly because of a critical lack of annotated data. In this work we: (i) introduce a large scale dataset to enable the development and benchmarking of these systems, featuring more than 4000 high-resolution swine carcass images annotated by domain experts with pixel-level segmentation; (ii) exploit part of this annotation to train a deep learning model in the task of pleural lesion scoring. In this setting, we propose a segmentation-guided framework which stacks together a fully convolutional neural network performing semantic segmentation with a rule-based classifier integrating a-priori veterinary knowledge in the process. Thorough experimental analysis against state-of-the-art baselines proves our method to be superior both in terms of accuracy and in terms of model interpretability. Code and dataset are publicly available here: https://github.com/lucabergamini/swine-lesion-scoring.

Segmentation Guided Scoring of Pathological Lesions in Swine Through CNNs / Bergamini, L.; Trachtman, A. R.; Palazzi, A.; Negro, E. D.; Capobianco Dondona, A.; Marruchella, G.; Calderara, S.. - 11808:(2019), pp. 352-360. (Intervento presentato al convegno 2nd International Workshop on Recent Advances in Digital Security: Biometrics and Forensics, BioFor 2019, 1st International Workshop on Pattern Recognition for Cultural Heritage, PatReCH 2019, 1st International Workshop eHealth in the Big Data and Deep Learning Era, e-BADLE 2019, International Workshop on Deep Understanding Shopper Behaviors and Interactions in Intelligent Retail Environments, DEEPRETAIL 2019 and Industrial session held at the 20th International Conference on Image Analysis and Processing, ICIAP 2019 tenutosi a ita nel 2019) [10.1007/978-3-030-30754-7_35].

Segmentation Guided Scoring of Pathological Lesions in Swine Through CNNs

Bergamini L.;Palazzi A.;Calderara S.
2019

Abstract

The slaughterhouse is widely recognised as a useful checkpoint for assessing the health status of livestock. At the moment, this is implemented through the application of scoring systems by human experts. The automation of this process would be extremely helpful for veterinarians to enable a systematic examination of all slaughtered livestock, positively influencing herd management. However, such systems are not yet available, mainly because of a critical lack of annotated data. In this work we: (i) introduce a large scale dataset to enable the development and benchmarking of these systems, featuring more than 4000 high-resolution swine carcass images annotated by domain experts with pixel-level segmentation; (ii) exploit part of this annotation to train a deep learning model in the task of pleural lesion scoring. In this setting, we propose a segmentation-guided framework which stacks together a fully convolutional neural network performing semantic segmentation with a rule-based classifier integrating a-priori veterinary knowledge in the process. Thorough experimental analysis against state-of-the-art baselines proves our method to be superior both in terms of accuracy and in terms of model interpretability. Code and dataset are publicly available here: https://github.com/lucabergamini/swine-lesion-scoring.
2019
2nd International Workshop on Recent Advances in Digital Security: Biometrics and Forensics, BioFor 2019, 1st International Workshop on Pattern Recognition for Cultural Heritage, PatReCH 2019, 1st International Workshop eHealth in the Big Data and Deep Learning Era, e-BADLE 2019, International Workshop on Deep Understanding Shopper Behaviors and Interactions in Intelligent Retail Environments, DEEPRETAIL 2019 and Industrial session held at the 20th International Conference on Image Analysis and Processing, ICIAP 2019
ita
2019
11808
352
360
Bergamini, L.; Trachtman, A. R.; Palazzi, A.; Negro, E. D.; Capobianco Dondona, A.; Marruchella, G.; Calderara, S.
Segmentation Guided Scoring of Pathological Lesions in Swine Through CNNs / Bergamini, L.; Trachtman, A. R.; Palazzi, A.; Negro, E. D.; Capobianco Dondona, A.; Marruchella, G.; Calderara, S.. - 11808:(2019), pp. 352-360. (Intervento presentato al convegno 2nd International Workshop on Recent Advances in Digital Security: Biometrics and Forensics, BioFor 2019, 1st International Workshop on Pattern Recognition for Cultural Heritage, PatReCH 2019, 1st International Workshop eHealth in the Big Data and Deep Learning Era, e-BADLE 2019, International Workshop on Deep Understanding Shopper Behaviors and Interactions in Intelligent Retail Environments, DEEPRETAIL 2019 and Industrial session held at the 20th International Conference on Image Analysis and Processing, ICIAP 2019 tenutosi a ita nel 2019) [10.1007/978-3-030-30754-7_35].
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Utilizza questo identificativo per citare o creare un link a questo documento: https://hdl.handle.net/11380/1222901
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