Human Pose Estimation with Iterative Error Feedback

CVPR 2016 Joao CarreiraPulkit AgrawalKaterina FragkiadakiJitendra Malik

Hierarchical feature extractors such as Convolutional Networks (ConvNets) have achieved impressive performance on a variety of classification tasks using purely feedforward processing. Feedforward architectures can learn rich representations of the input space but do not explicitly model dependencies in the output spaces, that are quite structured for tasks such as articulated human pose estimation or object segmentation... (read more)

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