Search-Based Local Black-Box Deobfuscation: Understand, Improve and Mitigate (Poster)

Grégoire Menguy, Sébastien Bardin, Richard Bonichon, Cauim de Souza Lima
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Abstract

This presentation is based on the paper "Search-based Local Blackbox Deobfuscation: Understand Improve and Mitigate'' from the same authors, which has been accepted for publication at ACM CCS 2021. Code obfuscation aims at protecting Intellectual Property and other secrets embedded into software from being retrieved. Recent works leverage advances in artificial intelligence (AI) with the hope of getting blackbox deobfuscators completely immune to standard (whitebox) protection mechanisms. While promising, this new field of AI-based, and more specifically search-based blackbox deobfuscation, is still in its infancy. In this article we deepen the state of search-based blackbox deobfuscation in three key directions: understand the current state-of-the-art, improve over it and design dedicated protection mechanisms. In particular, we define a novel generic framework for search-based blackbox deobfuscation encompassing prior work and highlighting key components; we are the first to point out that the search space underlying code deobfuscation is too unstable for simulation-based methods (e.g., Monte Carlo Tree Search used in prior work) and advocate the use of robust methods such as S-metaheuristics; we propose the new optimized search-based blackbox deobfuscator Xyntia which significantly outperforms prior work in terms of success rate (especially with small time budget) while being completely immune to the most recent anti-analysis code obfuscation methods; and finally we propose two novel protections against search-based blackbox deobfuscation, allowing to counter Xyntia powerful attacks.
基于搜索的本地黑盒去混淆:理解、改进和缓解(海报)
本演讲基于同一作者的论文“基于搜索的本地黑箱去混淆:理解,改进和缓解”,该论文已被ACM CCS 2021接受发表。代码混淆的目的是保护嵌入到软件中的知识产权和其他秘密不被检索。最近的工作利用人工智能(AI)的进步,希望让黑盒去混淆器完全不受标准(白盒)保护机制的影响。虽然前景光明,但这个基于人工智能的新领域,更具体地说,是基于搜索的黑箱去混淆,仍处于起步阶段。在本文中,我们从三个关键方向深化了基于搜索的黑盒去混淆的状态:了解当前的最新技术,改进它和设计专用的保护机制。特别是,我们定义了一个新的通用框架,用于基于搜索的黑箱去混淆,包括先前的工作并突出显示关键组件;我们首先指出,代码去混淆的搜索空间对于基于仿真的方法(例如,在之前的工作中使用的蒙特卡罗树搜索)来说太不稳定,并提倡使用稳健的方法,如s -元启发式;我们提出了新的优化的基于搜索的黑盒去混淆器Xyntia,它在成功率方面显著优于先前的工作(特别是在小时间预算下),同时完全不受最新的反分析代码混淆方法的影响;最后,我们提出了两种针对基于搜索的黑盒去混淆的新保护措施,允许对抗辛西娅的强大攻击。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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