DATC RDF-2019: Towards a complete academic reference design flow
Jianli Chen, Iris Hui Ru Jiang, et al.
ICCAD 2019
With the growth of multimedia data generation and consumption, image-based data analytics plays an increasingly important role in big data analytics systems. For image analytics, feature detection algorithms provide a foundation for a variety of image-based applications. These algorithms are typically computationally intensive and thus are good candidates for acceleration with field programmable gate arrays (FPGAs). In this paper, we investigate a Harris-Laplace variant of scale-invariant feature detection, a widely used image analytics algorithm, to demonstrate the capability of acceleration. Based on stream computing, we construct a fully pipelined implementation that can process one pixel per FPGA clock cycle. Our implementation significantly outperforms the existing published work. The proposed implementation adopts a single-precision floating-point representation and can detect the features of 640 × 480-pixel images at 540 frames per second. This throughput is sufficient for multistream real-time video interpretation.
Jianli Chen, Iris Hui Ru Jiang, et al.
ICCAD 2019
Jinwook Jung, Iris Hui Ru Jiang, et al.
ICCAD 2018
Iris Hui Ru Jiang, Gi Joon Nam, et al.
ICCAD 2014
Jinwook Jung, Iris Hui Ru Jiang, et al.
ICCAD 2016