Deep neural networks are highly effective tools for human and animal pose estimation. However, robustness to out-of-domain data remains a challenge. Here, we probe the transfer and generalization ability for pose estimation with two architecture classes (MobileNetV2s and ResNets) pretrained on ImageNet. We generated a novel dataset of 30 horses that allowed for both within-domain and out-of-domain (unseen horse) testing. We find that pretraining on ImageNet strongly improves out-of-domain performance. Moreover, we show that for both pretrained and networks trained from scratch, better ImageNet-performing architectures perform better for pose estimation, with a substantial improvement on out-of-domain data when pretrained. Collectively, our ...
This paper introduces a new architecture for human pose estimation using a multi-layer convolutional...
Abstract Large data requirements are often the main hurdle in training neural networks. Convolutiona...
International audienceThis paper addresses the task of relative camera pose estimation from raw imag...
Deep models must learn robust and transferable representations in order to perform well on new domai...
Deep learning has dominated the computer vision field since 2012, but a common criticism of deep lea...
ImageNet pre-training has enabled state-of-the-art results on many tasks. In spite of its recognized...
This paper introduces a new architecture for human pose estimation using a multi- layer convolutiona...
Supervised training of deep neural networks requires a large amount of training data. Since labeling...
Recent contributions have demonstrated that it is possible to recognize the pose of humans densely a...
Computer vision has long relied on ImageNet and other large datasets of images sampled from the Inte...
This paper introduces a new architecture for human pose estimation using a multi-layer convolutional...
International audienceMost deep pose estimation methods need to be trained for specific object insta...
Parameter fine tuning is a transfer learning approach whereby learned parameters from pre-trained so...
Quantifying behavior is crucial for many applications in neuroscience. Videography provides easy met...
Given the dependency of current CNN architectures on a large training set, the possibility of usin...
This paper introduces a new architecture for human pose estimation using a multi-layer convolutional...
Abstract Large data requirements are often the main hurdle in training neural networks. Convolutiona...
International audienceThis paper addresses the task of relative camera pose estimation from raw imag...
Deep models must learn robust and transferable representations in order to perform well on new domai...
Deep learning has dominated the computer vision field since 2012, but a common criticism of deep lea...
ImageNet pre-training has enabled state-of-the-art results on many tasks. In spite of its recognized...
This paper introduces a new architecture for human pose estimation using a multi- layer convolutiona...
Supervised training of deep neural networks requires a large amount of training data. Since labeling...
Recent contributions have demonstrated that it is possible to recognize the pose of humans densely a...
Computer vision has long relied on ImageNet and other large datasets of images sampled from the Inte...
This paper introduces a new architecture for human pose estimation using a multi-layer convolutional...
International audienceMost deep pose estimation methods need to be trained for specific object insta...
Parameter fine tuning is a transfer learning approach whereby learned parameters from pre-trained so...
Quantifying behavior is crucial for many applications in neuroscience. Videography provides easy met...
Given the dependency of current CNN architectures on a large training set, the possibility of usin...
This paper introduces a new architecture for human pose estimation using a multi-layer convolutional...
Abstract Large data requirements are often the main hurdle in training neural networks. Convolutiona...
International audienceThis paper addresses the task of relative camera pose estimation from raw imag...