Sketch explainability plays a crucial role in diverse downstream sketch-related tasks, offering insights beyond network behavior.
Zusammenfassung
The paper explores the significance of human strokes in sketch explainability, proposing a lightweight solution for seamless integration with pre-trained models.
Applications include retrieval, generation, assisted drawing, and adversarial attacks on sketches.
Stroke-level attribution maps provide insights into model predictions and behavior across various tasks.
Evaluation metrics include mAP, precision, accuracy, and mean opinion score (MOS) for different applications.
Human studies assess transparency, fairness, and trustworthiness of the model's predictions based on stroke attributions.
Zusammenfassung anpassen
Mit KI umschreiben
Zitate generieren
Quelle übersetzen
In eine andere Sprache
Mindmap erstellen
aus dem Quellinhalt
Quelle besuchen
arxiv.org
What Sketch Explainability Really Means for Downstream Tasks