4 research outputs found

    Adaptation of Images and Videos for Different Screen Sizes

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    With the increasing popularity of smartphones and similar mobile devices, the demand for media to consume on the go rises. As most images and videos today are captured with HD or even higher resolutions, there is a need to adapt them in a content-aware fashion before they can be watched comfortably on screens with small sizes and varying aspect ratios. This process is called retargeting. Most distortions during this process are caused by a change of the aspect ratio. Thus, retargeting mainly focuses on adapting the aspect ratio of a video while the rest can be scaled uniformly. The main objective of this dissertation is to contribute to the modern image and video retargeting, especially regarding the potential of the seam carving operator. There are still unsolved problems in this research field that should be addressed in order to improve the quality of the results or speed up the performance of the retargeting process. This dissertation presents novel algorithms that are able to retarget images, videos and stereoscopic videos while dealing with problems like the preservation of straight lines or the reduction of the required memory space and computation time. Additionally, a GPU implementation is used to achieve the retargeting of videos in real-time. Furthermore, an enhancement of face detection is presented which is able to distinguish between faces that are important for the retargeting and faces that are not. Results show that the developed techniques are suitable for the desired scenarios

    GPU Integration into a Software Defined Radio Framework

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    Software Defined Radio (SDR) was brought about by moving processing done on specific hardware components to reconfigurable software. Hardware components like General Purpose Processors (GPPs), Digital Signal Processors (DSPs) and Field Programmable Gate Arrays (FPGAs) are used to make the software and hardware processing of the radio more portable and as efficient as possible. Graphics Processing Units (GPUs) designed years ago for video rendering, are now finding new uses in research. The parallel architecture provided by the GPU gives developers the ability to speed up the performance of computationally intense programs. An open source tool for SDR, Open Source Software Communications Architecture (SCA) Implementation: Embedded (OSSIE), is a free waveform development environment for any developer who wants to experiment with SDR. In this work, OSSIE is integrated with a GPU computing framework to show how performance improvement can be gained from GPU parallelization. GPU research performed with SDR encompasses improving SDR simulations to implementing specific wireless protocols. In this thesis, we are aiming to show performance improvement within an SCA architected SDR implementation. The software components within OSSIE gained significant performance increases with little software changes due to the natural parallelism of the GPU, using Compute Unified Device Architecture (CUDA), Nvidia\u27s GPU programming API. Using sample data sizes for the I and Q channel inputs, performance improvements were seen in as little as 512 samples when using the GPU optimized version of OSSIE. As the sample size increased, the CUDA performance improved as well. Porting OSSIE components onto the CUDA architecture showed that improved performance can be seen in SDR related software through the use of GPU technology
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