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Learning Task-Aware Sampling with Shared Saliency through Density-Equalizing Mappings

Researchers have developed a Density-Equalizing Convolutional Neural Network (DECNN) that uses learned density functions to dynamically redistribute computational attention toward informative regions in images and surfaces. The framework addresses inefficiencies in standard uniform convolution, which wastes resources on uninformative areas, by applying density-equalizing mappings that enlarge task-relevant zones and compress others. In tests on image classification and craniofacial surface analysis, DECNN achieved competitive or superior performance with fewer parameters while producing interpretable saliency maps.

read1 min publishedJun 12, 2026

arXiv:2606.12869v1 Announce Type: new Abstract: In image and surface-based learning tasks, convolutional features are typically extracted using receptive fields that are sampled uniformly across the entire domain. However, informative structures are rarely distributed uniformly in practice and are often concentrated in localized regions. Such phenomena are particularly common in medical imaging, where pathological changes are spatially confined. Consequently, uniform convolution allocates equal computational effort to both informative and uninformative regions, resulting in inefficient feature extraction and suboptimal utilization of model capacity. To address this issue, we propose a framework for task-adaptive sampling that dynamically redistributes computational attention according to the spatial importance of the data. Specifically, we introduce the Density-Equalizing Convolutional Neural Network (DECNN), which employs density-equalizing mappings to guide convolution through a learned density function. The density function encodes the relative importance of different regions and induces a transformation that enlarges informative areas while compressing less relevant ones. As a result, convolutional receptive fields are redistributed non-uniformly over the domain, enabling denser sampling in task-relevant regions. By coupling this importance-driven transformation with convolution, DECNN performs adaptive feature extraction that focuses computational resources on informative structures. This leads to more efficient use of model capacity, yielding a lightweight yet expressive architecture while simultaneously producing an interpretable saliency map. Experiments on image classification and craniofacial surface analysis demonstrate that DECNN achieves competitive or superior performance with fewer parameters, accurately identifies task-relevant regions, and remains robust under complex geometric variations.

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