DeepAP: Deep Learning-based Aperture Photometry Feasibility Assessment and Aperture Size Prediction
Zheng-Jun Du, Qing-Quan Li, Yi-Cheng Rui, Yu-Li Liu, Yu-Ting Wu, Dong Li, Bing-Feng Seng, Yi-Fan Xuan, Fa-Bo Feng

TL;DR
DeepAP introduces a two-stage deep learning framework combining Vision Transformer and ResNet to assess aperture photometry feasibility and predict optimal aperture sizes, significantly improving speed and accuracy for high-precision optical surveys.
Contribution
The paper presents a novel deep learning approach that automates aperture photometry assessment and optimization, outperforming classical methods in speed and bias mitigation.
Findings
ViT achieves ROC AUC of 0.96 for feasibility assessment.
ResNet effectively predicts aperture sizes, improving SNR.
Framework speeds up processing by 59,000 times compared to exhaustive methods.
Abstract
Aperture photometry is a fundamental technique widely used to obtain high-precision light curves in optical survey projects like Tianyu. However, its effectiveness is limited in crowded fields, and the choice of aperture size critically impacts photometric precision. To address these challenges, we propose DeepAP, an efficient and accurate two-stage deep learning framework for aperture photometry. Specifically, for a given source, we first train a Vision Transformer (ViT) model to assess its feasibility of aperture photometry. We then train the Residual Neural Network (ResNet) to predict its optimal aperture size. For aperture photometry feasibility assessment, the ViT model yields an ROC AUC value of 0.96, and achieves a precision of 0.974, a recall of 0.930, and an F1 score of 0.952 on the test set. For aperture size prediction, the ResNet model effectively mitigates biases inherent…
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