基于对抗训练的鲁棒显著目标检测

Yunhao Pan, Chenhong Sui, Haipeng Wang, Hao Liu, Guobin Yang, Ao Wang, Q. Gong
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引用次数: 0

摘要

深度显著目标检测取得了显著进展。遗憾的是,现有的方法大多集中在干净的样品上,没有考虑人为或自然因素引起的噪声干扰。这导致检测性能极易受到微小扰动的影响。为此,本文提出了基于对抗训练(ATSOD)的鲁棒显著目标检测方法。具体来说,我们引入了经典的DSS算法,并将其注入到一个有利于显著目标检测的对抗性训练框架中。这确保了除了干净的样本外,还可以探索涉及微小干扰的对抗样本来进行模型训练。在五种常用的基准上进行了对比实验。实验结果表明,尽管自然样例的性能略有下降,但对抗性样例的性能有显着提高。
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Robust Salient Object Detection via Adversarial Training
Deep salient object detection has experienced noticeable progress. Unfortunately, most existing methods focus on clean samples regardless of the noise disturbance induced by human or natural factors. This results in the detection performance being extremely vulnerable to small perturbations. To this end, this paper proposes robust salient object detection via adversarial training (ATSOD). In specific, we introduce the classical DSS algorithm and inject it into an adversarial training framework favoring salient object detection. This ensures that, apart from clean samples, adversarial examples involving tiny disturbances are also explored for model training. Comparative experiments are conducted on five popular benchmarks. Experimental results show that despite the slight performance degradation for natural examples, there is a significant performance improvement for adversarial examples.
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