Saliency Map
Saliency maps are visual representations highlighting the most influential regions of an input (e.g., image, video, audio) for a model's prediction, aiming to improve the interpretability of "black box" models like deep neural networks. Current research focuses on developing more accurate and robust saliency map generation methods, often employing gradient-based techniques, transformer architectures, and diffusion models, and exploring their application across diverse data modalities (images, videos, audio, time series). These advancements are crucial for enhancing trust and understanding in AI systems, particularly in high-stakes applications like medical diagnosis and autonomous driving, by providing insights into model decision-making processes.
Papers
Boundary Attention Mapping (BAM): Fine-grained saliency maps for segmentation of Burn Injuries
Mahla Abdolahnejad, Justin Lee, Hannah Chan, Alex Morzycki, Olivier Ethier, Anthea Mo, Peter X. Liu, Joshua N. Wong, Colin Hong, Rakesh Joshi
Reliability Scores from Saliency Map Clusters for Improved Image-based Harvest-Readiness Prediction in Cauliflower
Jana Kierdorf, Ribana Roscher
DC-Net: Divide-and-Conquer for Salient Object Detection
Jiayi Zhu, Xuebin Qin, Abdulmotaleb Elsaddik