USENIX Security ’23 – PELICAN: Exploiting Backdoors of Naturally Trained Deep Learning Models In Binary Code Analysis

Authors/Presenters: Zhuo Zhang, Guanhong Tao, Guangyu Shen, Shengwei An, Qiuling Xu, Yingqi Liu, Yapeng Ye, Yaoxuan Wu, Xiangyu Zhang

Many thanks to USENIX for publishing their outstanding USENIX Security ’23 Presenter’s content, and the organizations strong commitment to Open Access.
Originating from the conference’s events situated at the Anaheim Marriott; and via the organizations YouTube channel.

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