Computer Science > Computer Vision and Pattern Recognition
[Submitted on 21 Mar 2023 (v1), last revised 27 Mar 2023 (this version, v2)]
Title:Explain To Me: Salience-Based Explainability for Synthetic Face Detection Models
View PDFAbstract:The performance of convolutional neural networks has continued to improve over the last decade. At the same time, as model complexity grows, it becomes increasingly more difficult to explain model decisions. Such explanations may be of critical importance for reliable operation of human-machine pairing setups, or for model selection when the "best" model among many equally-accurate models must be established. Saliency maps represent one popular way of explaining model decisions by highlighting image regions models deem important when making a prediction. However, examining salience maps at scale is not practical. In this paper, we propose five novel methods of leveraging model salience to explain a model behavior at scale. These methods ask: (a) what is the average entropy for a model's salience maps, (b) how does model salience change when fed out-of-set samples, (c) how closely does model salience follow geometrical transformations, (d) what is the stability of model salience across independent training runs, and (e) how does model salience react to salience-guided image degradations. To assess the proposed measures on a concrete and topical problem, we conducted a series of experiments for the task of synthetic face detection with two types of models: those trained traditionally with cross-entropy loss, and those guided by human salience when training to increase model generalizability. These two types of models are characterized by different, interpretable properties of their salience maps, which allows for the evaluation of the correctness of the proposed measures. We offer source codes for each measure along with this paper.
Submission history
From: Patrick Tinsley [view email][v1] Tue, 21 Mar 2023 16:01:55 UTC (29,499 KB)
[v2] Mon, 27 Mar 2023 16:56:38 UTC (23,561 KB)
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