Zamansky, Anna
Machine Learning Approaches to Predict and Detect Early-Onset of Digital Dermatitis in Dairy Cows using Sensor Data
Magana, Jennifer, Gavojdian, Dinu, Menachem, Yakir, Lazebnik, Teddy, Zamansky, Anna, Adams-Progar, Amber
Keywords: animal behavior, dairy cattle, digital dermatitis, sensor data, machine learning Abstract The aim of this study was to employ machine learning algorithms based on sensor behavior data for (1) early-onset detection of digital dermatitis (DD); and (2) DD prediction in dairy cows. With the ultimate goal to set-up early warning tools for DD prediction, which would than allow a better monitoring and management of DD under commercial settings, resulting in a decrease of DD prevalence and severity, while improving animal welfare. A machine learning model that is capable of predicting and detecting digital dermatitis in cows housed under free-stall conditions based on behavior sensor data has been purposed and tested in this exploratory study. The model for DD detection on day 0 of the appearance of the clinical signs has reached an accuracy of 79%, while the model for prediction of DD 2 days prior to the appearance of the first clinical signs has reached an accuracy of 64%. The proposed machine learning models could help to develop a real-time automated tool for monitoring and diagnostic of DD in lactating dairy cows, based on behavior sensor data under conventional dairy environments. Results showed that alterations in behavioral patterns at individual levels can be used as inputs in an early warning system for herd management in order to detect variances in health of individual cows.
BovineTalk: Machine Learning for Vocalization Analysis of Dairy Cattle under Negative Affective States
Gavojdian, Dinu, Lazebnik, Teddy, Mincu, Madalina, Oren, Ariel, Nicolae, Ioana, Zamansky, Anna
There is a critical need to develop and validate non-invasive animal-based indicators of affective states in livestock species, in order to integrate them into on-farm assessment protocols, potentially via the use of precision livestock farming (PLF) tools. One such promising approach is the use of vocal indicators. The acoustic structure of vocalizations and their functions were extensively studied in important livestock species, such as pigs, horses, poultry and goats, yet cattle remain understudied in this context to date. Cows were shown to produce two types vocalizations: low-frequency calls (LF), produced with the mouth closed, or partially closed, for close distance contacts and open mouth emitted high-frequency calls (HF), produced for long distance communication, with the latter considered to be largely associated with negative affective states. Moreover, cattle vocalizations were shown to contain information on individuality across a wide range of contexts, both negative and positive. Nowadays, dairy cows are facing a series of negative challenges and stressors in a typical production cycle, making vocalizations during negative affective states of special interest for research. One contribution of this study is providing the largest to date pre-processed (clean from noises) dataset of lactating adult multiparous dairy cows during negative affective states induced by visual isolation challenges. Here we present two computational frameworks - deep learning based and explainable machine learning based, to classify high and low-frequency cattle calls, and individual cow voice recognition. Our models in these two frameworks reached 87.2% and 89.4% accuracy for LF and HF classification, with 68.9% and 72.5% accuracy rates for the cow individual identification, respectively.
Reports of the Workshops of the 32nd AAAI Conference on Artificial Intelligence
Bouchard, Bruno (Université du Québec à Chicoutimi) | Bouchard, Kevin (Université du Québec à Chicoutimi) | Brown, Noam (Carnegie Mellon University) | Chhaya, Niyati (Adobe Research, Bangalore) | Farchi, Eitan (IBM Research, Haifa) | Gaboury, Sebastien (Université du Québec à Chicoutimi) | Geib, Christopher (Smart Information Flow Technologies) | Gyrard, Amelie (Wright State University) | Jaidka, Kokil (University of Pennsylvania) | Keren, Sarah (Technion – Israel Institute of Technology) | Khardon, Roni (Tufts University) | Kordjamshidi, Parisa (Tulane University) | Martinez, David (MIT Lincoln Laboratory) | Mattei, Nicholas (IBM Research, TJ Watson) | Michalowski, Martin (University of Minnesota School of Nursing) | Mirsky, Reuth (Ben Gurion University) | Osborn, Joseph (Pomona College) | Sahin, Cem (MIT Lincoln Laboratory) | Shehory, Onn (Bar Ilan University) | Shaban-Nejad, Arash (University of Tennessee Health Science Center) | Sheth, Amit (Wright State University) | Shimshoni, Ilan (University of Haifa) | Shrobe, Howie (Massachusetts Institute of Technology) | Sinha, Arunesh (University of Southern California.) | Sinha, Atanu R. (Adobe Research, Bangalore) | Srivastava, Biplav (IBM Research, Yorktown Height) | Streilein, William (MIT Lincoln Laboratory) | Theocharous, Georgios (Adobe Research, San Jose) | Venable, K. Brent (Tulane University and IHMC) | Wagner, Neal (MIT Lincoln Laboratory) | Zamansky, Anna (University of Haifa)
The AAAI-18 workshop program included 15 workshops covering a wide range of topics in AI. Workshops were held Sunday and Monday, February 2–7, 2018, at the Hilton New Orleans Riverside in New Orleans, Louisiana, USA. This report contains summaries of the Affective Content Analysis workshop; the Artificial Intelligence Applied to Assistive Technologies and Smart Environments; the AI and Marketing Science workshop; the Artificial Intelligence for Cyber Security workshop; the AI for Imperfect-Information Games; the Declarative Learning Based Programming workshop; the Engineering Dependable and Secure Machine Learning Systems workshop; the Health Intelligence workshop; the Knowledge Extraction from Games workshop; the Plan, Activity, and Intent Recognition workshop; the Planning and Inference workshop; the Preference Handling workshop; the Reasoning and Learning for Human-Machine Dialogues workshop; and the the AI Enhanced Internet of Things Data Processing for Intelligent Applications workshop.