Software Listens In: Emotional Intelligence Through Affective Computing and Mobile Sensing

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Опубликовано 21 июня 2016, 20:19
As an essential approach to understanding human interactions, emotion classification is a vital component in behavioral studies and health care, as well as in the design of context-aware systems. Speech contains rich information about emotion, but the classification performance is still short of what is desired for the algorithms to be used in real systems. Also, the impact of noise is not well studied, especially for emotion sensing in noisy mobile environments. In this talk, I will present an emotion classification system using support vector machines with a threshold-based fusion mechanism, which provides the functionality to effectively increase the accuracy of the emotion classification at the expense of rejecting some samples as unclassified. A novel noise-resilient pitch detection algorithm called BaNa is adopted in the system, and will be briefly introduced. The emotion classification system is evaluated on 1) a standard emotional speech database, 2) noisy speech data, and 3) data from real users. This talk will also envision the broad applications that can be enabled by emotional intelligence. The challenges for mobile emotion sensing design will also be discussed.
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