Sean P. Mealin, Zach Cleghern, Marc Foster, A. Bozkurt, D. Roberts
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引用次数: 5
Abstract
Training a guide dog is a long and expensive process which involves experts with years of experience. At Guiding Eyes for the Blind, a large national guide dog school, a factor in the decision for whether a dog is suitable to continue training are numeric scores based on a subjective judgement during observation of the dog as it undergoes formal evaluations. As a step towards a more objective system, we outfitted dogs undergoing these evaluations with a data collection system capable of collecting electrocardiography and other data. Using both a prototype network and an optimized network, we show that electrocardiography data can be used to predict 29 behavioral scores with approximately 92% accuracy over 11 distinct tasks during the evaluation. Additionally, we show that each of the 11 tasks can predict any of the scores, indicating that the most predictive features in the data may be task agnostic.
训练导盲犬是一个漫长而昂贵的过程,需要有多年经验的专家。在大型国家导盲犬学校“导盲眼”(Guiding Eyes for the Blind),决定一只狗是否适合继续训练的一个因素是,在对狗进行正式评估时,通过观察狗的主观判断得出的数字分数。作为迈向更客观系统的一步,我们为接受这些评估的狗配备了能够收集心电图和其他数据的数据收集系统。使用原型网络和优化网络,我们表明心电图数据可以用于预测评估过程中11个不同任务的29个行为分数,准确率约为92%。此外,我们表明11个任务中的每一个都可以预测任何分数,这表明数据中最具预测性的特征可能是任务不可知的。