FADE: A Task-Agnostic Upsampling Operator for Encoder-Decoder Architectures
Hao Lu, Wenze Liu, Hongtao Fu, Zhiguo Cao

TL;DR
FADE is a versatile, lightweight upsampling operator that adaptively balances semantic and detail preservation, improving performance across various dense prediction tasks without significant computational overhead.
Contribution
Introduces FADE, a novel task-agnostic upsampling operator that fuses encoder and decoder features with a gating mechanism, enabling robust performance on both region- and detail-sensitive tasks.
Findings
Consistent performance improvements across multiple dense prediction tasks.
Effective upsampling on both semantic segmentation and image matting.
Lightweight and parameter-efficient implementation of semi-shift convolution.
Abstract
The goal of this work is to develop a task-agnostic feature upsampling operator for dense prediction where the operator is required to facilitate not only region-sensitive tasks like semantic segmentation but also detail-sensitive tasks such as image matting. Prior upsampling operators often can work well in either type of the tasks, but not both. We argue that task-agnostic upsampling should dynamically trade off between semantic preservation and detail delineation, instead of having a bias between the two properties. In this paper, we present FADE, a novel, plug-and-play, lightweight, and task-agnostic upsampling operator by fusing the assets of decoder and encoder features at three levels: i) considering both the encoder and decoder feature in upsampling kernel generation; ii) controlling the per-point contribution of the encoder/decoder feature in upsampling kernels with an…
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Taxonomy
TopicsElectrostatic Discharge in Electronics · Advancements in Semiconductor Devices and Circuit Design · VLSI and Analog Circuit Testing
