In this work, we first propose a deep neural network (DNN) system for the automatic detection of speech in audio signals, otherwise known as voice activity detection (VAD). Several DNN types were investigated, including multilayer perceptrons (MLPs), recurrent neural networks (RNNs), and convolutional neural networks (CNNs), with the best performance being obtained for the latter. Additional postprocessing techniques, i.e., hysteretic thresholding, minimum duration filtering, and bilateral extension, were employed in order to boost performance. The systems were trained and tested using several data subsets of the CENSREC-1-C database, with different simulated ambient noise conditions, and additional testing was performed on a different CENSREC-1-C data subset containing actual ambient noise, as well as on a subset of the TIMIT database. An accuracy of up to 99.13% was obtained for the CENSREC-1-C datasets, and 97.60% for the TIMIT dataset. We proceed to show how the final VAD system can be adapted and employed within an utterance-level deceptive speech detection (DSD) processing pipeline. The best DSD performance is achieved by a novel hybrid CNN-MLP network leveraging a fusion of algorithmically and automatically extracted speech features, and reaches an unweighted accuracy (UA) of 63.7% on the RLDD database, and 62.4% on the RODeCAR database.
This paper presents a method of implementing a large virtual capacitor using an area-efficient capacitance multiplier circuit. The multiplier solves the major issue of large area consumption in integrated circuits needing high capacitance values. The proposed architecture improves other important parameters, such as the quality factor and the operating signal range. An analytical equivalent model is derived. The circuit is completely characterized in terms of model parameters and voltage and frequency operating ranges. Simulations are run to confirm feasibility and performance. An experimental version is implemented using discrete devices. A comparison between the theoretical, simulated, and experimental results is made.
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