Accurately annotated image datasets are essential components for studying animal behaviors from their poses. Compared to the number of species we know and may exist, the existing labeled pose datasets cover only a small portion of them, while building comprehensive large-scale datasets is prohibitively expensive. Here, we present a very data efficient strategy targeted for pose estimation in quadrupeds that requires only a small amount of real images from the target animal. It is confirmed that fine-tuning a backbone network with pretrained weights on generic image datasets such as ImageNet can mitigate the high demand for target animal pose data and shorten the training time by learning the the prior knowledge of object segmentation and keypoint estimation in advance. However, when faced with serious data scarcity (i.e., $<10^2$ real images), the model performance stays unsatisfactory, particularly for limbs with considerable flexibility and several comparable parts. We therefore introduce a prior-aware synthetic animal data generation pipeline called PASyn to augment the animal pose data essential for robust pose estimation. PASyn generates a probabilistically-valid synthetic pose dataset, SynAP, through training a variational generative model on several animated 3D animal models. In addition, a style transfer strategy is utilized to blend the synthetic animal image into the real backgrounds. We evaluate the improvement made by our approach with three popular backbone networks and test their pose estimation accuracy on publicly available animal pose images as well as collected from real animals in a zoo.
翻译:与我们已知和可能存在的物种数量相比,现有的贴标签的表面数据集只涵盖一小部分,而建立全面的大规模数据集则费用太高。在这里,我们提出了一个数据效率很高的战略,目的是在四倍的基础上进行估计,只需要目标动物提供少量真实图像。因此,我们采用了一种事先意识到的合成动物数据生成管道,称为PASAyn,以扩大动物构成的可靠估算所必需的数据。 PASyn通过对先前的目标动物成像成像成像成像成像成像成像和关键点的预估数学习,可以减轻对目标动物成像数据的高需求,缩短培训时间。然而,当面临严重数据短缺(即实际图像为 < 10美元220美元)时,模型性能仍然不能令人满意,特别是四肢和相当灵活和一些可比较的部分。因此,我们采用了一种事先认识到的合成动物数据生成管道,称为PASynyn,以扩大动物构成稳健的估估估估估量所必需的数据。 PASynyn能产生一些精确的模型-validalid 合成合成合成改进模型,SyalAP 3 将模型转化为模型转换成一个用于动物的模型模型模型,通过对动物的合成模型的模型的模型的模型,SyAPAPAP 3 。