ImageHD: Energy-Efficient On-Device Continual Learning of Visual Representations via Hyperdimensional Computing
Jebacyril Arockiaraj, Dhruv Parikh, Viktor Prasanna

TL;DR
ImageHD is an FPGA-based system that enables energy-efficient, real-time continual learning of visual representations on resource-constrained devices using hyperdimensional computing.
Contribution
The paper introduces a hardware-aware, FPGA-accelerated continual learning method combining HDC with a quantized CNN, optimized for low-latency, on-device deployment.
Findings
Achieves up to 40.4x speedup over CPU baseline.
Provides 383x energy efficiency improvement over GPU.
Demonstrates practical real-time edge AI capabilities.
Abstract
On-device continual learning (CL) is critical for edge AI systems operating on non-stationary data streams, but most existing methods rely on backpropagation or exemplar-heavy classifiers, incurring substantial compute, memory, and latency overheads. Hyperdimensional computing (HDC) offers a lightweight alternative through fast, non-iterative online updates. Combined with a compact convolutional neural network (CNN) feature extractor, HDC enables efficient on-device adaptation with strong visual representations. However, prior HDC-based CL systems often depend on multi-tier memory hierarchies and complex cluster management, limiting deployability on resource-constrained hardware. We present ImageHD, an FPGA accelerator for on-device continual learning of visual data based on HDC. ImageHD targets streaming CL under strict latency and on-chip memory constraints, avoiding costly…
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