A Mobile 3-D Object Recognition Processor With Deep-Learning-Based Monocular Depth Estimation

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A 3-D object recognition system is a heavy task that consumes high sensor power and requires complex 3-D data processing. In this article, the proposed processor produces 3-D red, green, blue, and depth (RGB-D) data from an RGB image through a deep learning-based monocular depth estimation, and then its RGB-D data are sporadically calibrated with low-resolution depth data from a low-power depth sensor, lowering the sensor power by 27.3 times. Then, the proposed processor accelerates various convolution operations in the system by integrating the in-out skipping-based bit-slice-level computing processing elements and flexibly allocating workloads considering data properties. Moreover, the point feature (PF) aggregator is designed close to the global memory to support the PF reuse algorithm's data aggregation. Additionally, the window-based search algorithm and its memory management are presented for efficient point processing in the point processing unit. Consequently, the 210-mW and 34-frames-per-second end-to-end 3-D object recognition processor is successfully demonstrated.
Publisher
IEEE COMPUTER SOC
Issue Date
2023-05
Language
English
Article Type
Article
Citation

IEEE MICRO, v.43, no.3, pp.74 - 82

ISSN
0272-1732
DOI
10.1109/MM.2023.3255502
URI
http://hdl.handle.net/10203/310985
Appears in Collection
EE-Journal Papers(저널논문)
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