ITE Transactions on Media Technology and Applications
Online ISSN : 2186-7364
ISSN-L : 2186-7364
Special Section on Fast-track Review
[Paper] Lightweight Object Detection Model for a CMOS Image Sensor with Binary Feature Extraction
Keiichiro KurodaYudai MorikakuYu OsukaRyoya IegakiRyuichi UjiieHideki ShimaKota YoshidaShunsuke Okura
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2026 年 14 巻 1 号 p. 102-109

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Anticipating the rise of the Internet of Things (IoT) era, we have proposed an object detection framework that employs a CMOS image sensor with binary feature extraction to reduce power requirements. Initially, we presented a lightweight deep neural network for the feature data based on the YOLOv7, comparable to the YOLOv7-tiny in the number of parameters and FLOPs, but it enhances large object recognition accuracy (APL50) by 6.6%. Moreover, our approach achieves a 48.8% reduction of GPU power consumption compared to the YOLOv7. Additionally, we introduce an on-chip signal processing method for the binary feature data. The proposed method achieves a compression rate of 64.1% and increases GPU power consumption by only 14.9% during the decoding process preceding object detection. Moreover, the size of 1-bit feature data is reduced by 96.0%, and object recognition accuracy is improved by 4.0% relative to 1-bit RGB color images.

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