2023
DOI: 10.1142/s0219843623500081
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When Deep is not Enough: Towards Understanding Shallow and Continual Learning Models in Realistic Environmental Sound Classification for Robots

Abstract: Although deep learning models are state-of-the-art models in audio classification, they fall short when applied in developmental robotic settings and human–robot interaction (HRI). The major drawback is that deep learning relies on supervised training with a large amount of data and annotations. In contrast, developmental learning strategies in human–robot interaction often deal with small-scale data acquired from HRI experiments and require the incremental addition of novel classes. Alternatively, shallow lea… Show more

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