Recently, system designers are facing the challenge of developing systems that have diverse features, are more complex and more powerful, with less power consumption and reduced time to market. These contradictory constraints have forced technology providers to pursue design solutions that will allow design teams to meet the above design targets. In that respect, this paper introduces an innovative technology platform, called MORPHEUS, which intents to provide complete design framework for dealing with the aforementioned challenges. MORPHEUS consists of a state of the art architecture that encompasses heterogeneous reconfigurable accelerators for implementing on the same hardware architecture applications with varying characteristics and a tool chain that, through a software oriented approach, eases the implementation of highly complex applications with heterogeneous characteristics. The proposed approach has been tested and evaluated through state of the art cases studies borrowed from complementary application domains.
Camera-based systems in series vehicles have gained in importance in the past several years, which is documented, for example, by the introduction of front-view cameras and applications such as traffic sign or lane detection by all major car manufacturers. Besides a pure or enhanced visualization of the vehicle's environment, camera systems have also been extensively used for the design and implementation of complex driver assistance functions in diverse research scenarios, as they offer the possibility to extract both depth and motion information of static and moving objects. However, the evolution of existing computation-intensive vision applications from research vehicles toward series integration is currently a challenging task, which is due to the absence of highperformance computer architectures that adhere to the existing strict power and cost constraints. This paper addresses this challenge and explores FPGA-based dense block matching, which enables the calculation of depth information and motion estimation on shared hardware resources, regarding its applicability in intelligent vehicles. This includes the introduction of design scalability in time and space, thereby supporting customized application implementations and multiple camera setups. The presented modular concept also enables enhancements with pre-and post-processing features, which can be utilized to refine the obtained matching results. Its usability has been evaluated in diverse application scenarios and reaches high-performance image processing results of up to 740 GOPS at an acceptable energy level of 11 Watts, rendering it a suitable candidate for future series vehicles.
Reconfigurable computing offers a wide range of low cost and efficient solutions for embedded systems. The proper choice of the reconfigurable device, the granularity of its processing elements and its memory architecture highly depend on This work was supported in part by the European Union in the 6th R&D Framework Program (MORPHEUS IST project, number 027342).A. Grasset (B) · P. Millet · P. Bonnot · S. Yehia 329 the type of application and their data flow. Existing solutions either offer fine grain FPGAs, which rely on a hardware synthesis flow and offer the maximum degree of flexibility, or coarser grain solutions, which are usually more suitable for a particular type of data flow and applications. In this paper, we present the MORPHEUS architecture, a versatile reconfigurable heterogeneous System-on-Chip targeting streaming applications. The presented architecture exploits different reconfigurable technologies at several computation granularities that efficiently address the different applications needs. In order to efficiently exploit the presented architecture, we implemented a complete software solution to map C applications to the reconfigurable architecture. In this paper, we describe the complete toolset and provide concrete use cases of the architecture.
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