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HAMLET: A Hierarchical Multimodal Attention-based Human Activity Recognition Algorithm

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To fluently collaborate with people, robots need the ability to recognize human activities accurately. Although modern robots are equipped with various sensors, robust human activity recognition (HAR) still remains a challenging task for robots due to difficulties related to multimodal data fusion. To address these challenges, in this work, we introduce a deep neural network-based multimodal HAR algorithm, HAMLET. HAMLET incorporates a hierarchical architecture, where the lower layer encodes spatio-temporal features from unimodal data by adopting a multi-head self-attention mechanism. We develop a novel multimodal attention mechanism for disentangling and fusing the salient unimodal features to compute the multimodal features in the upper layer. Finally, multimodal features are used in a fully connect neural-network to recognize human activities. We evaluated our algorithm by comparing its performance to several state-of-the-art activity recognition algorithms on three human activity datasets. The results suggest that HAMLET outperformed all other evaluated baselines across all datasets and metrics tested, with the highest top-1 accuracy of 95.12% and 97.45% on the UTD-MHAD [1] and the UT-Kinect [2] datasets respectively, and F1-score of 81.52% on the UCSD-MIT [3] dataset. We further visualize the unimodal and multimodal attention maps, which provide us with a tool to interpret the impact of attention mechanisms concerning HAR.

Md Mofijul Islam, Tariq Iqbal• 2020

Related benchmarks

TaskDatasetResultRank
9-class classificationPathMNIST
Accuracy91.85
32
ClassificationRetinaMNIST
ACC63.38
24
ClassificationPneumoniaMNIST
Accuracy89.42
24
Action RecognitionUT-Kinect (leave-one-out-cross-validation protocol)--
17
ClassificationOrganAMNIST
Accuracy95.28
14
Medical Image ClassificationSIPaKMeD D6 (test)
Accuracy92.8
12
ClassificationTissueMNIST
Accuracy69.58
12
Medical Image ClassificationHAM10000 D5 (test)
Accuracy93.5
12
Medical Image ClassificationCRC D7 (test)
Accuracy96.7
12
ClassificationBreastMNIST
Accuracy86.68
12
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