AdaPool: Exponential Adaptive Pooling for Information-Retaining Downsampling
Publication date
2023
Editors
Advisors
Supervisors
Document Type
Article
Metadata
Show full item recordCollections
License
cc_by_nc_nd
Abstract
Pooling layers are essential building blocks of convolutional neural networks (CNNs), to reduce computational overhead and increase the receptive fields of proceeding convolutional operations. Their goal is to produce downsampled volumes that closely resemble the input volume while, ideally, also being computationally and memory efficient. Meeting both these requirements remains a challenge. To this end, we propose an adaptive and exponentially weighted pooling method: adaPool. Our method learns a regional-specific fusion of two sets of pooling kernels that are based on the exponent of the Dice-Sorensen coefficient and the exponential maximum, respectively. AdaPool improves the preservation of detail on a range of tasks including image and video classification and object detection. A key property of adaPool is its bidirectional nature. In contrast to common pooling methods, the learned weights can also be used to upsample activation maps. We term this method adaUnPool. We evaluate adaUnPool on image and video super-resolution and frame interpolation. For benchmarking, we introduce Inter4K, a novel high-quality, high frame-rate video dataset. Our experiments demonstrate that adaPool systematically achieves better results across tasks and backbones, while introducing a minor additional computational and memory overhead.
Keywords
Pooling, downsampling, upsampling, Software, Computer Graphics and Computer-Aided Design
Citation
Stergiou, A & Poppe, R 2023, 'AdaPool: Exponential Adaptive Pooling for Information-Retaining Downsampling', IEEE Transactions on Image Processing, vol. 32, pp. 251-266. https://doi.org/10.1109/TIP.2022.3227503