Cross-Modality Interaction Network for Equine Activity Recognition Using Imbalanced Multi-Modal Data †
Abstract
:1. Introduction
- We proposed a CMI-Net involving a dual CNN trunk architecture and a joint CMIM to improve equine activity recognition performance using accelerometer and gyroscope data. The dual CNN trunk architecture comprised a residual-like convolution block (Res-LCB) which effectively promoted the representation ability and robustness of the model [33]. The CMIM based on attention mechanism enabled CMI-Net to capture complementary information and suppressed unrelated information (e.g., noise, redundant signals, and potentially confusing signals) from multi-modal data.
- We devised a novel attention module, i.e., CMIM, to achieve deep intermodality interaction. The CMIM combined spatial information from two-stream feature maps using basic CNN to produce two spatial attention maps with respect to their importance, which could adaptively recalibrate temporal- and axis-wise features in each modality. To the best of our knowledge, the attention mechanism was employed for the first time in animal activity recognition based on multi-modal data yielded by multiple wearable sensors.
- We adopted a CB focal loss to supervise the training of CMI-Net to mitigate the influence of imbalanced datasets on overall classification performance. The CB focal loss can pay more attention not only to samples of minority classes, diminishing their influence from being overwhelmed during optimization, but also to samples that are hard to distinguish. As far as we know, this is the first time the CB focal loss has been utilized in animal activity recognition based on imbalanced datasets.
- Experiments performed verified the effectiveness of our proposed CMI-Net and CB focal loss. In particular, the experimental results demonstrated that our CMI-Net outperformed the existing algorithms in equine activity recognition with the precision of 79.74%, recall of 79.57%, F1-score of 79.02%, and accuracy of 93.37%, respectively.
2. Materials and Methods
2.1. Data Description
2.2. Cross-Modality Interaction Network
2.2.1. Dual CNN Trunk Architecture
2.2.2. Cross-Modality Interaction Module
2.3. Optimization
2.4. Evaluation Metrics
2.5. Implementation Details
3. Results and Discussion
3.1. Comparison with Existing Methods
3.2. Ablation Study
3.2.1. Evaluation of CMIM
3.2.2. Evaluation of CB Focal Loss
3.3. Classification Performance Analysis
3.4. Limitations and Future Works
4. Conclusions
Author Contributions
Funding
Institutional Review Board Statement
Informed Consent Statement
Acknowledgments
Conflicts of Interest
Abbreviations
ACS | Adaptive class suppression |
CB | Class-balanced |
CB_CE | Class-balanced cross-entropy |
CE | Cross-entropy |
CMIM | Cross-modality interaction module |
CMI-Net | Cross-modality interaction network |
CNN | Convolutional neural network |
CS_CE | Cost-sensitive cross-entropy |
DT | Decision tree |
FN | False negative |
FNNs | Feed-forward neural networks |
FP | False positive |
IMUs | Inertial measurement units |
LDA | Linear discriminant analysis |
LOOCV | Leave-one-out cross-validation |
LSTM | Long short-term memory |
NB | Naïve Bayes |
QDA | Quadratic discriminant analysis |
Res-LCB | Residual-like convolution block |
RF | Random forest |
SVM | Support vector machine |
TN | True negative |
TP | True positive |
t-SNE | t-distributed stochastic neighbor embedding |
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Methods | Precision (%) | Recall (%) | F1-Score (%) | Accuracy (%) |
---|---|---|---|---|
Machine learning | ||||
Naïve Bayes | 70.90 | 72.41 | 69.42 | 76.60 |
Decision tree | 75.67 | 73.90 | 74.35 | 88.83 |
Support vector machine | 73.92 | 71.30 | 72.19 | 89.65 |
Deep learning | ||||
CNN [15] | 72.07 | 76.91 | 73.42 | 82.94 |
ConvNet7 [14] | 79.03 | 77.79 | 77.90 | 91.27 |
Our methods # | ||||
CMI-Net + softmax CE loss | 79.74 | 79.57 | 79.02 | 93.37 |
CMI-Net + CB focal loss (γ = 0.5) * | 82.50 | 83.73 | 82.94 | 90.68 |
Methods & | Precision (%) | Recall (%) | F1-Score (%) | Accuracy (%) |
---|---|---|---|---|
Variant0 # | 79.02 | 77.09 | 76.88 | 91.76 |
Variant1 * | 78.18 | 77.07 | 77.40 | 92.17 |
Variant2 * | 77.50 | 78.44 | 77.91 | 92.92 |
Variant3 * | 78.36 | 76.94 | 77.02 | 92.62 |
CMI-Net + softmax CE loss | 79.74 | 79.57 | 79.02 | 93.37 |
Loss Functions | Precision (%) | Recall (%) | F1-Score (%) | Accuracy (%) |
---|---|---|---|---|
Softmax CE Loss (baseline) | 79.74 | 79.57 | 79.02 | 93.37 |
CB focal loss (γ = 0.1) | 81.31 | 83.60 | 81.97 | 89.57 |
CB focal loss (γ = 0.5) | 82.50 | 83.73 | 82.94 | 90.68 |
CB focal loss (γ = 1) | 80.42 | 82.03 | 81.05 | 89.89 |
CB focal loss (γ = 2) | 78.92 | 78.48 | 77.97 | 91.05 |
Loss Functions # | Precision (%) | Recall (%) | F1-Score (%) | Accuracy (%) |
---|---|---|---|---|
Softmax CE loss | 79.74 | 79.57 | 79.02 | 93.37 |
Class-level | ||||
CS_CE loss [24] | 80.47 | 85.11 | 79.91 | 83.79 |
CB_CE loss [25] | 75.35 | 75.70 | 75.47 | 90.61 |
Sample-level | ||||
Focal loss [26] | 78.84 | 77.99 | 78.25 | 93.30 |
ACS loss [27] | 77.03 | 76.54 | 76.60 | 92.05 |
CB focal loss (γ = 0.5) | 82.50 | 83.73 | 82.94 | 90.68 |
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Mao, A.; Huang, E.; Gan, H.; Parkes, R.S.V.; Xu, W.; Liu, K. Cross-Modality Interaction Network for Equine Activity Recognition Using Imbalanced Multi-Modal Data. Sensors 2021, 21, 5818. https://doi.org/10.3390/s21175818
Mao A, Huang E, Gan H, Parkes RSV, Xu W, Liu K. Cross-Modality Interaction Network for Equine Activity Recognition Using Imbalanced Multi-Modal Data. Sensors. 2021; 21(17):5818. https://doi.org/10.3390/s21175818
Chicago/Turabian StyleMao, Axiu, Endai Huang, Haiming Gan, Rebecca S. V. Parkes, Weitao Xu, and Kai Liu. 2021. "Cross-Modality Interaction Network for Equine Activity Recognition Using Imbalanced Multi-Modal Data" Sensors 21, no. 17: 5818. https://doi.org/10.3390/s21175818
APA StyleMao, A., Huang, E., Gan, H., Parkes, R. S. V., Xu, W., & Liu, K. (2021). Cross-Modality Interaction Network for Equine Activity Recognition Using Imbalanced Multi-Modal Data. Sensors, 21(17), 5818. https://doi.org/10.3390/s21175818