From predictive analytics to emotional recognition–The evolving landscape of cognitive computing in animal welfare

Suresh Neethirajan
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Abstract

This paper explores the fusion of data science and cognitive techniques in deciphering the behaviors and emotions of farm animals. The focus is on the strategic application of digital imaging and artificial intelligence to discern subtle behavioral patterns and micro-expressions in livestock, offering a predictive window into their emotional states. The significance of acoustic vocalization analysis in interpreting complex communicative signals and emotional subtleties is highlighted. The work extends to cognitive evaluations, such as mirror tests and bias assessments, revealing higher levels of self-awareness and cognitive abilities in farm animals than previously recognized. Emphasizing the need for a synergistic approach, the paper advocates for melding technological advancements with a deep understanding of animal psychology and behavior. This ensures that technology enhances rather than supplants traditional observational methods in animal welfare. The discussion delves into various methodologies and algorithms that measure cognition, underscoring the pivotal role of cognitive computing in advancing animal welfare. A cautious and informed application of these technologies is proposed, emphasizing their role in augmenting, not undermining, the essential human-animal bond. Ultimately, this critical review calls for an ethical, empathetic, and scientifically grounded integration of cognitive computing into animal welfare practices.

从预测分析到情感识别--认知计算在动物福利领域的发展前景
本文探讨了数据科学与认知技术在解读农场动物行为和情绪方面的融合。重点是战略性地应用数字成像和人工智能来辨别牲畜的微妙行为模式和微表情,为了解它们的情绪状态提供一个预测窗口。声学发声分析在解读复杂的交流信号和微妙的情绪方面具有重要意义。这项工作延伸到认知评估,如镜像测试和偏差评估,揭示了农场动物比以往认识到的更高水平的自我意识和认知能力。论文强调了协同方法的必要性,主张将技术进步与对动物心理和行为的深刻理解相结合。这将确保技术能够加强而不是取代动物福利方面的传统观察方法。讨论深入探讨了测量认知的各种方法和算法,强调了认知计算在促进动物福利方面的关键作用。我们建议谨慎而明智地应用这些技术,强调它们在增强而非削弱人与动物之间重要纽带方面的作用。最后,这篇评论呼吁将认知计算融入动物福利实践中,使之符合伦理、富有同情心并具有科学依据。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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CiteScore
13.80
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