The impact of data segmentation, sensors used, and feature selection on HAR was fully investigated.The Support Vector Machine (SVM), a supervised learning algorithm, has been used to recognise six ambulation activities: downstairs, sit to stand, sitting, standing, upstairs, and walking.Considering the impact that data segmentation can have on the classification, the sliding window size was optimised, identifying the length of 10 s with 50% of overlap as the best performing.
The inertial sensors and pressure sensors embedded into the smart insoles have been assessed to determine the importance that each one has in the classification.A feature selection technique has been applied to reduce the number of features from 272 to 227 to improve the robustness of the proposed system and to investigate the importance of features in the dataset.According to the findings, the inertial sensors are reliable for the recognition of dynamic activities, while pressure sensors are reliable for stationary activities; however, 30" Convection Wall Oven the highest accuracy (