**Signal Computing: Digital Signals in the Software Domain**

by M. Stiber, B.Z. Stiber, E.C. Larson

**Publisher**: University of Washington Bothell 2016**Number of pages**: 206

**Description**:

In this book, you will learn how digital signals are captured, represented, processed, communicated, and stored in computers. The specific topics we will cover include: physical properties of the source information (such as sound or images), devices for information capture (microphones, cameras), digitization, compression, digital signal representation (JPEG, MPEG), digital signal processing (DSP), and network communication.

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