Subspace-Based Face Recognition on an FPGA
Abstract
We present a custom hardware system for image recognition, featuring a dimensionality reduction network and a classification stage. We use Bi-Directional PCA and Linear Discriminant Analysis for feature extraction, and classify based on Manhattan distances. Our FPGA-based implementation runs at 75MHz, consumes 157.24mW of power, and can classify a 61 ×49-pixel image in 143.7μs, with a sustained throughput of more than 7,000 classifications per second. Compared to a software implementation on a workstation, our solution achieves the same classification performance (93.3% hit rate), with more than twice the throughput and more than an order of magnitud less power.
Domains
Computer Science [cs]Origin | Files produced by the author(s) |
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