Biased Mixtures Of Experts: Enabling Computer Vision Inference Under Data Transfer Limitations
Alhabib Abbas, Yiannis Andreopoulos

TL;DR
This paper introduces biased mixtures of experts for computer vision, optimizing model inference under data transfer constraints by selectively activating experts based on data availability, leading to improved performance.
Contribution
It presents a novel mixture-of-experts framework that biases expert selection to adapt to data transfer limitations, formulated as a convex optimization problem.
Findings
Outperforms previous methods under data transfer constraints
Effective across detection, super-resolution, and video classification
Biasing experts improves accuracy with limited data
Abstract
We propose a novel mixture-of-experts class to optimize computer vision models in accordance with data transfer limitations at test time. Our approach postulates that the minimum acceptable amount of data allowing for highly-accurate results can vary for different input space partitions. Therefore, we consider mixtures where experts require different amounts of data, and train a sparse gating function to divide the input space for each expert. By appropriate hyperparameter selection, our approach is able to bias mixtures of experts towards selecting specific experts over others. In this way, we show that the data transfer optimization between visual sensing and processing can be solved as a convex optimization problem.To demonstrate the relation between data availability and performance, we evaluate biased mixtures on a range of mainstream computer vision problems, namely: (i) single…
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