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Papers/Infrared and 3D skeleton feature fusion for RGB-D action r...

Infrared and 3D skeleton feature fusion for RGB-D action recognition

Alban Main de Boissiere, Rita Noumeir

2020-02-28submitted to IEEE Access 2020 2Action ClassificationSkeleton Based Action RecognitionData AugmentationAction RecognitionTemporal Action Localization
PaperPDFCode(official)

Abstract

A challenge of skeleton-based action recognition is the difficulty to classify actions with similar motions and object-related actions. Visual clues from other streams help in that regard. RGB data are sensible to illumination conditions, thus unusable in the dark. To alleviate this issue and still benefit from a visual stream, we propose a modular network (FUSION) combining skeleton and infrared data. A 2D convolutional neural network (CNN) is used as a pose module to extract features from skeleton data. A 3D CNN is used as an infrared module to extract visual cues from videos. Both feature vectors are then concatenated and exploited conjointly using a multilayer perceptron (MLP). Skeleton data also condition the infrared videos, providing a crop around the performing subjects and thus virtually focusing the attention of the infrared module. Ablation studies show that using pre-trained networks on other large scale datasets as our modules and data augmentation yield considerable improvements on the action classification accuracy. The strong contribution of our cropping strategy is also demonstrated. We evaluate our method on the NTU RGB+D dataset, the largest dataset for human action recognition from depth cameras, and report state-of-the-art performances.

Results

TaskDatasetMetricValueModel
Activity RecognitionNTU RGB+DAccuracy (CS)91.8FUSION (IR+Pose)
Activity RecognitionNTU RGB+DAccuracy (CV)94.9FUSION (IR+Pose)
Action RecognitionNTU RGB+DAccuracy (CS)91.8FUSION (IR+Pose)
Action RecognitionNTU RGB+DAccuracy (CV)94.9FUSION (IR+Pose)

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