LGSDASMay 11, 2020

deepSELF: An Open Source Deep Self End-to-End Learning Framework

arXiv:2005.06993v1Has Code
AI Analysis

This toolkit provides a flexible framework for researchers and practitioners working with multi-modal data, but it is incremental as it integrates existing methods into a new package.

The authors introduced deepSELF, an open-source toolkit for deep self end-to-end learning with multi-modal signals, assembling state-of-the-art deep learning technologies for analysis, pre-processing, and model customization.

We introduce an open-source toolkit, i.e., the deep Self End-to-end Learning Framework (deepSELF), as a toolkit of deep self end-to-end learning framework for multi-modal signals. To the best of our knowledge, it is the first public toolkit assembling a series of state-of-the-art deep learning technologies. Highlights of the proposed deepSELF toolkit include: First, it can be used to analyse a variety of multi-modal signals, including images, audio, and single or multi-channel sensor data. Second, we provide multiple options for pre-processing, e.g., filtering, or spectrum image generation by Fourier or wavelet transformation. Third, plenty of topologies in terms of NN, 1D/2D/3D CNN, and RNN/LSTM/GRU can be customised and a series of pretrained 2D CNN models, e.g., AlexNet, VGGNet, ResNet can be used easily. Last but not least, above these features, deepSELF can be flexibly used not only as a single model but also as a fusion of such.

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