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Predictive Spectral Calibration for Source-Free Test-Time Regression

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Test-time adaptation (TTA) for image regression has received far less attention than its classification counterpart. Methods designed for classification often depend on classification-specific objectives and decision boundaries, making them difficult to transfer directly to continuous regression targets. Recent progress revisits regression TTA through subspace alignment, showing that simple source-guided alignment can be both practical and effective. Building on this line of work, we propose Predictive Spectral Calibration (PSC), a source-free framework that extends subspace alignment to block spectral matching. Instead of relying on a fixed support subspace alone, PSC jointly aligns target features within the source predictive support and calibrates residual spectral slack in the orthogonal complement. PSC remains simple to implement, model-agnostic, and compatible with off-the-shelf pretrained regressors. Experiments on multiple image regression benchmarks show consistent improvements over strong baselines, with particularly clear gains under severe distribution shifts.

Nguyen Viet Tuan Kiet, Huynh Thanh Trung, Pham Huy Hieu• 2026

Related benchmarks

TaskDatasetResultRank
Image RegressionUTKFace (test)
Gaussian Noise Performance0.621
11
RegressionMNIST adapted from SVHN (test)
R^20.473
11
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