Conformal Prediction for Indoor Positioning with Correctness Coverage Guarantees
Journal:
arXiv
Published Date:
May 3, 2025
Abstract
With the advancement of Internet of Things (IoT) technologies, high-precision
indoor positioning has become essential for Location-Based Services (LBS) in
complex indoor environments. Fingerprint-based localization is popular, but
traditional algorithms and deep learning-based methods face challenges such as
poor generalization, overfitting, and lack of interpretability. This paper
applies conformal prediction (CP) to deep learning-based indoor positioning. CP
transforms the uncertainty of the model into a non-conformity score, constructs
prediction sets to ensure correctness coverage, and provides statistical
guarantees. We also introduce conformal risk control for path navigation tasks
to manage the false discovery rate (FDR) and the false negative rate (FNR).The
model achieved an accuracy of approximately 100% on the training dataset and
85% on the testing dataset, effectively demonstrating its performance and
generalization capability. Furthermore, we also develop a conformal p-value
framework to control the proportion of position-error points. Experiments on
the UJIIndoLoc dataset using lightweight models such as MobileNetV1, VGG19,
MobileNetV2, ResNet50, and EfficientNet show that the conformal prediction
technique can effectively approximate the target coverage, and different models
have different performance in terms of prediction set size and uncertainty
quantification.