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Papers/Mix Dimension in Poincaré Geometry for 3D Skeleton-based A...

Mix Dimension in Poincaré Geometry for 3D Skeleton-based Action Recognition

Wei Peng, Jingang Shi, Zhaoqiang Xia, Guoying Zhao

2020-07-30AnatomySkeleton Based Action RecognitionAction RecognitionTemporal Action LocalizationGraph Generation
PaperPDF

Abstract

Graph Convolutional Networks (GCNs) have already demonstrated their powerful ability to model the irregular data, e.g., skeletal data in human action recognition, providing an exciting new way to fuse rich structural information for nodes residing in different parts of a graph. In human action recognition, current works introduce a dynamic graph generation mechanism to better capture the underlying semantic skeleton connections and thus improves the performance. In this paper, we provide an orthogonal way to explore the underlying connections. Instead of introducing an expensive dynamic graph generation paradigm, we build a more efficient GCN on a Riemann manifold, which we think is a more suitable space to model the graph data, to make the extracted representations fit the embedding matrix. Specifically, we present a novel spatial-temporal GCN (ST-GCN) architecture which is defined via the Poincar\'e geometry such that it is able to better model the latent anatomy of the structure data. To further explore the optimal projection dimension in the Riemann space, we mix different dimensions on the manifold and provide an efficient way to explore the dimension for each ST-GCN layer. With the final resulted architecture, we evaluate our method on two current largest scale 3D datasets, i.e., NTU RGB+D and NTU RGB+D 120. The comparison results show that the model could achieve a superior performance under any given evaluation metrics with only 40\% model size when compared with the previous best GCN method, which proves the effectiveness of our model.

Results

TaskDatasetMetricValueModel
VideoNTU RGB+DAccuracy (CS)89.7Mix-Dimension
VideoNTU RGB+DAccuracy (CV)96Mix-Dimension
Temporal Action LocalizationNTU RGB+DAccuracy (CS)89.7Mix-Dimension
Temporal Action LocalizationNTU RGB+DAccuracy (CV)96Mix-Dimension
Zero-Shot LearningNTU RGB+DAccuracy (CS)89.7Mix-Dimension
Zero-Shot LearningNTU RGB+DAccuracy (CV)96Mix-Dimension
Activity RecognitionNTU RGB+DAccuracy (CS)89.7Mix-Dimension
Activity RecognitionNTU RGB+DAccuracy (CV)96Mix-Dimension
Action LocalizationNTU RGB+DAccuracy (CS)89.7Mix-Dimension
Action LocalizationNTU RGB+DAccuracy (CV)96Mix-Dimension
Action DetectionNTU RGB+DAccuracy (CS)89.7Mix-Dimension
Action DetectionNTU RGB+DAccuracy (CV)96Mix-Dimension
3D Action RecognitionNTU RGB+DAccuracy (CS)89.7Mix-Dimension
3D Action RecognitionNTU RGB+DAccuracy (CV)96Mix-Dimension
Action RecognitionNTU RGB+DAccuracy (CS)89.7Mix-Dimension
Action RecognitionNTU RGB+DAccuracy (CV)96Mix-Dimension

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