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Skeleton-Robustness-Benchmark(RobustBenchHAR)
RobustBenchHAR is a pytorch framework to boost and evaluate the adversarial robustness for Human skeletal behavior recognition. Official code for the paper:
ICLR2025 TASAR: Transfer-based Attack on Skeletal Action Recognition
Key Features of RobustBenchHAR:
- The first large-scale benchmark for evaluating adversarial robustness in human Activity Recognition (HAR): RobustBenchHAR ensembles existing adversarial attacks including several types and fairly evaluates various attacks under the same setting.
- Evaluate the robustness of various models and datasets: RobustBenchHAR provides a plug-and-play interface to verify the robustness of models on different data sets.
- A summary of transfer-based attacks and defenses: RobustBenchHAR reviews multiple adversarial attacks and defenses, making it easy to get the whole picture of attacks for practitioners.
For a full tutorial, please visit our github repository
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