2020
DOI: 10.20944/preprints202002.0318.v1
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FilterNet: A Many-to-Many Deep Learning Architecture for Time Series Classification

Abstract: We present and benchmark FilterNet, a flexible deep learning architecture for time series classification tasks, such as activity recognition via multichannel sensor data. It adapts popular CNN and CNN-LSTM motifs which have excelled in activity recognition benchmarks, implementing them in a many-to-many architecture to markedly improve frame-by-frame accuracy, event segmentation accuracy, model size, and computational efficiency. We propose several model variants, evaluate them alongside other published models… Show more

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References 27 publications
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