Abstract

Stereo estimation is essential to many applications such as mobile autonomous robots, most of which ask for real-time response, high energy, and storage efficiency. Deep neural networks (DNNs) have shown to yield significant gains in improving accuracy. However, these DNN-based algorithms are challenging to be deployed on energy and resource-constrained devices due to the high computational complexities of DNNs. In this article, we present StereoEngine, a fully pipelined end-to-end stereo vision accelerator that computes accurate dense depth in a real-time and energy-efficient manner. An efficient stereo algorithm is developed and optimized for a high-quality hardware-friendly implementation, that leverages binary neural network (BNN) to learn discriminative binary descriptors to improve the disparity. The design of StereoEngine is a standalone DNN-based stereo vision system where all processing procedures are implemented on a hardware platform. The effectiveness of StereoEngine is evaluated by comprehensive experiments. Compared with software-based implementations on the highend and embedded Nvidia GPUs, StereoEngine achieves up to 3×, 13×, and 50× speedups, as well as up to 211×, 58×, and 73× energy efficiency improvement, respectively. Furthermore, StereoEngine achieves leading accuracy when compared to state-of-the-art hardware implementations on the challenging KITTI dataset.

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