Embedded Systems Multimedia Framework for Microcontroller Devices

: pp. 43 - 49
etro Mohyla Black Sea National University

The presented  paper attempts to establish a generalized approach to the development of embedded systems multimedia applications. It is formalized in the form of a framework that defines rules and recommenda- tions for a developer on how to implement specific pieces of software that work with multimedia data. The basis for the development process is the division of the system’s func- tionality into stages with the following development of each stage. The framework also defines how touch sensor events may be elaborated. The proposed framework has been tested in a  test scenario  in an application with multiple stages. The results proved that the solution is feasible for multimedia applications (specifically, with graphics proc- essing) and can be regarded as a generalized approach to the development of embedded systems with multimedia functionality.

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