Jonetzko, YannickYannickJonetzkoFiedler, NiklasNiklasFiedlerEppe, ManfredManfredEppeZhang, JianweiJianweiZhang2022-03-242022-03-242021-125th International Conference on Cognitive Systems and Signal Processing (ICCSIP 2020)http://hdl.handle.net/11420/12098Robots are usually equipped with many different sensors that need to be integrated. While most research is focused on the integration of vision with other senses, we successfully integrate tactile and auditory sensor data from a complex robotic system. Herein, we train and evaluate a neural network for the classification of the content of eight optically identical medicine containers. To investigate the relevance of the tactile modality in classification under realistic conditions, we apply different noise levels to the audio data. Our results show significantly higher robustness to acoustic noise with the combined multimodal network than with the unimodal audio based counterpart.enAudioMultimodalNeural networkObject analysisTactileMLE@TUHHMultimodal Object Analysis with Auditory and Tactile Sensing Using Recurrent Neural NetworksConference Paper10.1007/978-981-16-2336-3_23Conference Paper