Deep Manifold-To-Manifold Transforming Network

2018 25TH IEEE INTERNATIONAL CONFERENCE ON IMAGE PROCESSING (ICIP)(2018)

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Abstract
In this paper, we propose an end-to-end deep manifold-to-manifold transforming network (DMT-Net), which makes SPD matrices flow from one Riemannian manifold to another more discriminative one. For discriminative feature learning, two specific layers on manifolds are developed: (i) the local SPD convolutional layer, (ii) the non-linear SPD activation layer, where positive definiteness is satisfied for both two layers. Further, to relieve computational burden of kernels on relative large-scale data, we design a batch-kernelized layer to favor batchwise kernel optimization of deep networks. Specifically, one reference set dynamically changing with the network training is introduced to break the limitation of memory size. We evaluate our proposed method on action recognition datasets, where input signals are popularly modeled as SPD matrices. The experimental results demonstrate that our DMT-Net is more competitive than state-of-the-art methods.
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Key words
Riemannian manifold,SPD matrix,Deep learning,Action Recognition
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