资源论文Mnemonic Descent Method: A recurrent process applied for end-to-end face alignment

Mnemonic Descent Method: A recurrent process applied for end-to-end face alignment

2019-12-20 | |  66 |   45 |   0

Abstract

Cascaded regression has recently become the method ofchoice for solving non-linear least squares problems suchas deformable image alignment. Given a sizeable trainingset, cascaded regression learns a set of generic rules that are sequentially applied to minimise the least squares problem. Despite the success of cascaded regression for problems such as face alignment and head pose estimation, there are several shortcomings arising in the strategies proposed thus far. Specifically, (a) the regressors are learnt independently, (b) the descent directions may cancel one anotherout and (c) handcrafted features (e.g., HoGs, SIFT etc.) aremainly used to drive the cascade, which may be sub-optimal for the task at hand. In this paper, we propose a combined and jointly trained convolutional recurrent neural network architecture that allows the training of an end-to-end to system that attempts to alleviate the aforementioned drawbacks. The recurrent module facilitates the joint optimisation of the regressors by assuming the cascades form a nonlinear dynamical system, in effect fully utilising the information between all cascade levels by introducing a memory unit that shares information across all levels. The convolutional module allows the network to extract features that are specialised for the task at hand and are experimentally shown to outperform hand-crafted features. We show that the application of the proposed architecture for the problem of face alignment results in a strong improvement over the current state-of-the-art.

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