Dog owners are typically capable of recognizing behavioral cues that reveal subjective states of their dogs, such as pain. But automatic recognition of the pain state is very challenging. This paper proposes a novel video-based, two-stream deep neural network approach for this problem. We extract and preprocess body keypoints, and compute features from both keypoints and the RGB representation over the video. We propose an approach to deal with self-occlusions and missing keypoints. We also present a unique video-based dog behavior dataset, collected by veterinary professionals, and annotated for presence of pain, and report good classification results with the proposed approach. This study is one of the first works on machine learning based estimation of dog pain state.
翻译:狗主通常能够识别显示狗的主观状态(如疼痛)的行为提示。 但自动识别疼痛状态非常具有挑战性。 本文建议对此问题采取新型的视频、双流深神经网络网络方法。 我们提取和预处理身体的键点,并从视频上的键点和 RGB 代表处计算特征。 我们提出了处理自我隔离和缺失关键点的方法。 我们还展示了独特的视频狗行为数据集,由兽医专业人士收集,并附加了疼痛的附加说明,报告良好的分类结果。 这项研究是根据对狗痛苦状况的估计进行机器学习的第一批研究之一。