Abstract
In this paper we report on an event-based stochastic architecture for the Adams/McKay Bayesian Online Change Point Detection algorithm (BOCPD) [1]. In the stochastic computational structures, probabilities are represented natively as stochastic events and computation is carried out directly with these probabilities and not probability density functions. A fully programmable BOCPD processor is synthesized in VHDL. The BOCPD algorithm with on-line learning, to perform foreground/background image segmentation with online learning. Running on a single Kintex 7 FPGA (Opal Kelly XEM7350-K410T) the architecture is capable of real-time processing a 160 × 120 pixels image, at 10 frames per second.
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