Author_Institution :
Machine Intell. & Signal Process. Group, Tech. Univ. Munchen, Munich, Germany
Abstract :
In this paper, we propose and evaluate a distributed system for multiple Computational Paralinguistics tasks in a client-server architecture. The client side deals with feature extraction, compression, and bit-stream formatting, while the server side performs the reverse process, plus model training, and classification. The proposed architecture favors large-scale data collection and continuous model updating, personal information protection, and transmission bandwidth optimization. In order to preliminarily investigate the feasibility and reliability of the proposed system, we focus on the trade-off between transmission bandwidth and recognition accuracy. We conduct large-scale evaluations of some key functions, namely, feature compression/decompression, model training and classification, on five common paralinguistic tasks related to emotion, intoxication, pathology, age and gender. We show that, for most tasks, with compression ratios up to 40 (bandwidth savings up to 97.5 percent), the recognition accuracies are very close to the baselines. Our results encourage future exploitation of the system proposed in this paper, and demonstrate that we are not far from the creation of robust distributed multi-task paralinguistic recognition systems which can be applied to a myriad of everyday life scenarios.
Keywords :
client-server systems; computational linguistics; data compression; pattern classification; bit-stream formatting; client-server architecture; computational paralinguistics; continuous model updating; data classification; data collection; data compression; distributed system; feature extraction; multitask paralinguistic recognition systems; personal information protection; plus model training; reverse process; transmission bandwidth optimization; Bandwidth; Computational modeling; Distributed processing; Feature extraction; Linguistics; Speech coding; Speech recognition; Computational paralinguistics; distributed recognition system; emotion; split vector quantization;