TREA: Low-precision Time-Multiplexed, Resource-Efficient Edge Accelerator for Object Detection and Classification
Vijay Pratap Sharma, and Mukul Lokhande, and Ratko Pilipovic, and Omkar Kokane, and Santosh Kumar Vishvakarma

TL;DR
TREA is a resource-efficient, low-precision edge accelerator for object detection that combines time-multiplexed SIMD units, structured pruning, and reconfigurable nonlinear functions to achieve high throughput and low latency.
Contribution
It introduces a novel low-precision, time-multiplexed SIMD architecture with structured pruning and reconfigurable activation functions for efficient edge vision processing.
Findings
Achieves up to 4x throughput improvement with no hardware duplication.
Enables near 50% structured sparsity while maintaining MAC utilization.
Reduces kernel computation latency by up to 9x compared to FxP8 mode.
Abstract
This work presents TREA, a low-precision time-multiplexed and resource-efficient edge-AI accelerator for object detection and classification, targeting stringent area-power-latency constraints of edge vision platforms. The proposed architecture integrates a dual-precision (4/8-bit) SIMD multiply-accumulate (DQ-MAC) unit based on most-significant-digit-first (MSDF) shift-and-add computation with run-time bit truncation, eliminating conventional multiplier overhead and reducing accumulator bit-width. The DQ-MAC supports 4x FxP4 or 1x FxP8 operations per cycle, achieving up to 4x throughput improvement without hardware duplication. A structured hardware-aware reductive pruning (SHARP) strategy is co-designed with the SIMD datapath, enabling near 50% structured sparsity while maintaining full MAC utilization. This allows a 3x3 convolution kernel to be computed in 1 cycle in FxP4 mode…
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