358 research outputs found
PI-BA Bundle Adjustment Acceleration on Embedded FPGAs with Co-observation Optimization
Bundle adjustment (BA) is a fundamental optimization technique used in many
crucial applications, including 3D scene reconstruction, robotic localization,
camera calibration, autonomous driving, space exploration, street view map
generation etc. Essentially, BA is a joint non-linear optimization problem, and
one which can consume a significant amount of time and power, especially for
large optimization problems. Previous approaches of optimizing BA performance
heavily rely on parallel processing or distributed computing, which trade
higher power consumption for higher performance. In this paper we propose
{\pi}-BA, the first hardware-software co-designed BA engine on an embedded
FPGA-SoC that exploits custom hardware for higher performance and power
efficiency. Specifically, based on our key observation that not all points
appear on all images in a BA problem, we designed and implemented a
Co-Observation Optimization technique to accelerate BA operations with
optimized usage of memory and computation resources. Experimental results
confirm that {\pi}-BA outperforms the existing software implementations in
terms of performance and power consumption.Comment: in Proceedings of IEEE FCCM 201
A Comprehensive Review and Systematic Analysis of Artificial Intelligence Regulation Policies
Due to the cultural and governance differences of countries around the world,
there currently exists a wide spectrum of AI regulation policy proposals that
have created a chaos in the global AI regulatory space. Properly regulating AI
technologies is extremely challenging, as it requires a delicate balance
between legal restrictions and technological developments. In this article, we
first present a comprehensive review of AI regulation proposals from different
geographical locations and cultural backgrounds. Then, drawing from historical
lessons, we develop a framework to facilitate a thorough analysis of AI
regulation proposals. Finally, we perform a systematic analysis of these AI
regulation proposals to understand how each proposal may fail. This study,
containing historical lessons and analysis methods, aims to help governing
bodies untangling the AI regulatory chaos through a divide-and-conquer manner
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