Feb. 5, 2024, 6:47 a.m. | Maurice G\"under Sneha Banerjee Rafet Sifa Christian Bauckhage

cs.CV updates on arXiv.org arxiv.org

Model-agnostic explanation methods for deep learning models are flexible regarding usability and availability. However, due to the fact that they can only manipulate input to see changes in output, they suffer from weak performance when used with complex model architectures. For models with large inputs as, for instance, in object detection, sampling-based methods like KernelSHAP are inefficient due to many computation-heavy forward passes through the model. In this work, we present a framework for using sampling-based explanation models in a …

architectures assessment availability cs.cv deep learning detection inputs instance model-agnostic part pedestrian performance sampling usability

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