ALBAR: Adversarial Learning approach to mitigate Biases in Action Recognition
Journal:
arXiv
Published Date:
Jan 31, 2025
Abstract
Bias in machine learning models can lead to unfair decision making, and while
it has been well-studied in the image and text domains, it remains
underexplored in action recognition. Action recognition models often suffer
from background bias (i.e., inferring actions based on background cues) and
foreground bias (i.e., relying on subject appearance), which can be detrimental
to real-life applications such as autonomous vehicles or assisted living
monitoring. While prior approaches have mainly focused on mitigating background
bias using specialized augmentations, we thoroughly study both foreground and
background bias. We propose ALBAR, a novel adversarial training method that
mitigates foreground and background biases without requiring specialized
knowledge of the bias attributes. Our framework applies an adversarial
cross-entropy loss to the sampled static clip (where all the frames are the
same) and aims to make its class probabilities uniform using a proposed entropy
maximization loss. Additionally, we introduce a gradient penalty loss for
regularization against the debiasing process. We evaluate our method on
established background and foreground bias protocols, setting a new
state-of-the-art and strongly improving combined debiasing performance by over
12% absolute on HMDB51. Furthermore, we identify an issue of background leakage
in the existing UCF101 protocol for bias evaluation which provides a shortcut
to predict actions and does not provide an accurate measure of the debiasing
capability of a model. We address this issue by proposing more fine-grained
segmentation boundaries for the actor, where our method also outperforms
existing approaches. Project Page:
https://joefioresi718.github.io/ALBAR_webpage/