Leaderboard

WHAR Arena benchmarks wearable human activity recognition models across standardized datasets, ranking predictive performance together with deployment-oriented efficiency.

Snapshot
Training Runs
4,760
Models
17
Datasets
30

Filters

Architecture
All architectures 7/7

Leaderboard

Model
CNN-HAR A*STAR
2.61% ±3.64%
CNN
67.7%0.711 0.93 MB0.735 4.12 MB0.592 11.3 ms0.673
TinyHAR Karlsruhe Institute of Technology
2.50% ±3.23%
Attention CNN Dense RNN
67.6%0.698 1.0 MB0.641 6.65 MB0.614 9.78 ms0.649
Triple-Cross-Attn Nanjing Normal University · Southeast University
2.47% ±3.36%
Attention CNN Dense
67.6%0.552 3.1 MB0.601 8.17 MB0.576 12.6 ms0.576
DANA Imperial College London · Queen Mary University of London
1.92% ±3.62%
CNN Dense RNN
67.0%0.495 0.552 10.1 MB0.467 25.2 ms0.503
TinierHAR German Research Center for Artificial Intelligence (DFKI)
1.62% ±3.29%
Attention CNN Dense RNN
66.7%0.967 0.11 MB0.967 1.05 MB0.729 4.45 ms0.841
Attend+Discriminate The University of Adelaide
1.51% ±3.50%
Attention CNN Dense RNN
66.6%0.528 3.6 MB0.292 39.9 MB0.301 79.7 ms0.364
DynamicWHAR Zhejiang University
1.16% ±2.72%
CNN Dense Graph
66.3%0.351 13.6 MB0.492 14.1 MB0.429 33.5 ms0.421
Random Forest Baseline
0.00% ±0.00%
Features
65.1%0.606 1.9 MB0.470 15.5 MB0.914 0.73 ms0.616
DeepConvLSTM-Attn Georgia Institute of Technology
-0.43% ±3.43%
Attention CNN Dense RNN
64.7%0.487 4.6 MB0.619 6.96 MB0.316 69.0 ms0.460
MLP-HAR Karlsruhe Institute of Technology
-0.87% ±2.77%
Dense Spectral
64.2%0.449 6.1 MB0.617 6.87 MB0.633 7.57 ms0.559
DeepConvLSTM University of Sussex
-1.49% ±3.37%
CNN Dense RNN
63.6%0.481 4.5 MB0.621 6.50 MB0.308 70.2 ms0.455
MLP-Mixer University of Southampton
-2.65% ±4.55%
Dense
62.5%0.509 3.3 MB0.653 4.92 MB0.484 19.1 ms0.543
Guan-LSTM Newcastle University · Georgia Institute of Technology
-5.04% ±4.22%
Dense RNN
60.1%0.478 3.3 MB0.652 3.62 MB0.290 63.4 ms0.453
DeepConvShallowLSTM University of Siegen
-5.15% ±3.09%
CNN Dense RNN
60.0%0.444 4.3 MB0.543 7.37 MB0.379 32.7 ms0.451
SA-HAR University of Dhaka · Independent University Bangladesh
-5.26% ±3.28%
Attention CNN Dense
59.8%0.542 1.8 MB0.593 5.29 MB0.497 13.2 ms0.542
SVM Baseline
-14.95% ±2.97%
Features
50.2%0.150 11.3 MB0.138 28.2 MB0.387 2.84 ms0.216
k-NN Baseline
-18.85% ±3.34%
Features
46.3%0.000 21.2 MB0.081 21.6 MB0.000 84.7 ms0.026

Dataset × Model Matrix

Dataset
95.697.790.893.491.295.795.798.391.497.491.193.590.195.581.290.482.1
96.096.196.095.095.294.092.184.792.693.293.094.691.590.092.372.771.2
91.591.291.388.990.988.693.591.588.591.287.691.290.588.685.376.567.4
86.986.588.587.087.085.689.687.384.285.383.384.082.881.184.275.969.7
86.986.885.684.486.486.287.889.383.884.382.081.583.285.777.475.970.9
86.180.581.383.084.884.085.787.680.580.878.077.278.481.976.576.664.2
81.485.083.585.583.883.881.971.684.776.184.083.084.283.065.159.251.2
87.088.387.284.186.386.469.084.980.185.479.366.168.380.280.752.838.3
84.881.082.083.681.481.479.467.179.579.277.380.573.459.775.763.966.3
82.580.778.180.078.680.078.875.475.473.077.780.375.077.979.265.247.6
76.278.174.371.175.773.375.772.771.076.573.578.868.962.969.837.743.3
68.868.768.571.368.669.468.959.869.061.867.269.870.667.865.449.843.9
63.165.470.658.765.961.462.670.665.274.762.260.365.965.158.166.759.4
72.471.172.769.972.666.767.555.963.465.164.066.866.754.161.544.343.1
64.466.368.066.864.965.270.165.664.264.463.359.960.159.759.951.444.5
57.660.261.764.060.957.268.480.359.358.955.051.850.867.353.056.747.3
69.265.859.560.668.562.457.557.559.459.860.462.456.253.356.648.644.1
62.162.261.960.359.662.364.265.157.663.155.847.851.855.959.048.049.0
55.061.058.752.655.654.561.172.852.256.552.943.245.754.551.746.940.4
68.265.867.064.861.067.264.751.259.461.654.964.924.719.061.023.933.9
58.758.058.160.156.059.957.447.656.853.056.357.959.542.950.336.731.7
63.358.755.262.458.461.052.544.561.142.356.357.255.538.038.719.223.4
47.649.049.352.648.253.055.062.648.746.348.142.343.353.642.948.738.0
51.551.151.152.150.950.947.046.951.547.851.550.852.346.542.936.839.2
52.752.249.849.349.148.649.953.148.846.347.248.939.135.851.031.532.4
50.050.252.451.851.250.656.254.245.749.145.533.137.340.841.929.829.2
49.146.647.844.848.342.944.152.542.946.144.341.944.543.941.441.238.5
52.351.161.557.245.253.841.541.952.543.848.237.835.446.931.127.628.6
40.243.942.743.645.443.037.833.841.840.640.738.929.235.437.731.731.1
30.429.232.031.730.329.532.226.829.123.627.627.326.931.723.818.517.6

Deployment Trade-Offs

Mean Test Macro-F1 vs. Latency

0.02345689044%51%57%64%70%Mean latency (ms)Mean test Macro-F1CNN-HARTinyHARTriple-Cross-AttnDANATinierHARAttend+DiscriminateDynamicWHARRandom ForestDeepConvLSTM-AttnMLP-HARDeepConvLSTMMLP-MixerGuan-LSTMDeepConvShallowLSTMSA-HARSVMk-NN

Mean Test Macro-F1 vs. Peak PSS Delta

0.01020304044%51%57%64%70%Mean peak PSS delta (MB)Mean test Macro-F1CNN-HARTinyHARTriple-Cross-AttnDANATinierHARAttend+DiscriminateDynamicWHARRandom ForestDeepConvLSTM-AttnMLP-HARDeepConvLSTMMLP-MixerGuan-LSTMDeepConvShallowLSTMSA-HARSVMk-NN

Mean Test Macro-F1 vs. Exported Model Size

0.06.313192544%51%57%64%70%Exported model size (MB)Mean test Macro-F1CNN-HARTinyHARTriple-Cross-AttnTinierHARAttend+DiscriminateDynamicWHARRandom ForestDeepConvLSTM-AttnMLP-HARDeepConvLSTMMLP-MixerGuan-LSTMDeepConvShallowLSTMSA-HARSVMk-NN

Citation

@misc{burzer2026whararenabenchmarkingstate,
  title = {{WHAR Arena}: Benchmarking the State of the Art in Efficient Wearable Human Activity Recognition},
  author = {Maximilian Burzer and Tobias King and Till Riedel and Michael Beigl and Tobias R{"o}ddiger},
  year = {2026},
  eprint = {2606.13194},
  archivePrefix = {arXiv},
  primaryClass = {cs.LG},
  url = {https://arxiv.org/abs/2606.13194}
}

Acknowledgements

This work was partially funded by the IPAI Foundation gGmbH through the Science Residency Program and by the Helmholtz Association Initiative and Networking Fund through the HAICORE@KIT partition. Support was also provided by the HammerHAI project, an EU co-funded AI Factory initiative operated by the High-Performance Computing Center Stuttgart. This project has received funding from the European High Performance Computing Joint Undertaking (EuroHPC JU) under Grant Agreement No. 101234027. It is jointly co-funded by the EuroHPC JU through the European Union's Digital Europe Programme, the European Commission, the German Federal Ministry of Research, Technology and Space (BMFTR), the Baden-Württemberg Ministry of Science, Research and the Arts, the Bavarian State Ministry of Science and the Arts, and the Lower Saxony Ministry of Science and Culture. Views and opinions expressed are those of the author(s) only and do not necessarily reflect those of the European Union or the EuroHPC JU.

OpenWearables