6533b834fe1ef96bd129d5de

RESEARCH PRODUCT

Fast and Robust Face Detection on a Parallel Optimized Architecture implemented on FPGA

Fan YangMichel PaindavoineNicolas FarrugiaSébastien RouxFranck Mamalet

subject

[INFO.INFO-AR]Computer Science [cs]/Hardware Architecture [cs.AR][INFO.INFO-AR] Computer Science [cs]/Hardware Architecture [cs.AR]BiometricsComputer sciencebusiness.industryReal-time computingComputingMethodologies_IMAGEPROCESSINGANDCOMPUTERVISIONImage processing02 engineering and technologyFacial recognition system020202 computer hardware & architectureRobustness (computer science)Multilayer perceptron0202 electrical engineering electronic engineering information engineeringMedia Technology020201 artificial intelligence & image processing[ INFO.INFO-AR ] Computer Science [cs]/Hardware Architecture [cs.AR]Electrical and Electronic EngineeringField-programmable gate arraybusinessFace detectionComputer hardwareComputingMilieux_MISCELLANEOUS

description

In this paper, we present a parallel architecture for fast and robust face detection implemented on FPGA hardware. We propose the first implementation that meets both real-time requirements in an embedded context and face detection robustness within complex backgrounds. The chosen face detection method is the Convolutional Face Finder (CFF) algorithm, which consists of a pipeline of convolution and subsampling operations, followed by a multilayer perceptron. We present the design methodology of our face detection processor element (PE). This methodology was followed in order to optimize our implementation in terms of memory usage and parallelization efficiency. We then built a parallel architecture composed of a PE ring and an FIFO memory, resulting in a scalable system capable of processing images of different sizes. A ring of 25 PEs running at 80 MHz is able to process 127 QVGA images per second and performing real-time face detection on VGA images (35 images per second).

https://hal.archives-ouvertes.fr/hal-00640765