Title :
18.3 A 0.5V 54μW ultra-low-power recognition processor with 93.5% accuracy geometric vocabulary tree and 47.5% database compression
Author :
Youchang Kim ; Injoon Hong ; Hoi-Jun Yoo
Author_Institution :
KAIST, Daejeon, South Korea
Abstract :
Microwatt object recognition is being considered for many applications, such as autonomous micro-air-vehicle (MAV) navigation, a vision-based wake-up or user authentication for the smartphones, and a gesture recognition-based natural UI for wearable devices in the Internet-of-Things (IoT) era. These applications require extremely low power consumption, while maintaining high recognition accuracy - constraints that arise because of the requirement for continuous heavy vision processing under limited battery capacity. Recently, a low-power feature-extraction accelerator operating at near-threshold voltage (NTV) was proposed, however, it did not support the object matching essential for the object recognition [1]. Even state-of-the-art object matching accelerators consume over 10mW, thereby making them unsuitable for an MAV [2, 3]. Therefore, an ultra-low-power high-accuracy recognition processor is necessary, especially for MAVs and IoT devices.
Keywords :
low-power electronics; microprocessor chips; object recognition; Internet-of-Things; autonomous micro-air-vehicle navigation; database compression; geometric vocabulary tree; gesture recognition-based natural UI; heavy vision processing; low power consumption; low-power feature-extraction accelerator; microwatt object recognition; near-threshold voltage; object matching; power 54 muW; ultralow-power recognition processor; voltage 0.5 V; wearable devices; Accuracy; Decoding; Geometry; Memory management; Power demand; Vectors; Vocabulary;
Conference_Titel :
Solid- State Circuits Conference - (ISSCC), 2015 IEEE International
Conference_Location :
San Francisco, CA
Print_ISBN :
978-1-4799-6223-5
DOI :
10.1109/ISSCC.2015.7063060