Refining CNN-based Heatmap Regression with Gradient-based Corner Points for Electrode Localization
Journal:
arXiv
Published Date:
Dec 22, 2024
Abstract
We propose a method for detecting the electrode positions in lithium-ion
batteries. The process begins by identifying the region of interest (ROI) in
the battery's X-ray image through corner point detection. A convolutional
neural network is then used to regress the pole positions within this ROI.
Finally, the regressed positions are optimized and corrected using corner point
priors, significantly mitigating the loss of localization accuracy caused by
operations such as feature map down-sampling and padding during network
training. Our findings show that combining traditional pixel gradient analysis
with CNN-based heatmap regression for keypoint extraction enhances both
accuracy and efficiency, resulting in significant performance improvements.