自动发现移动应用中输入验证的隐藏行为

Qingchuan Zhao, Chaoshun Zuo, Brendan Dolan-Gavitt, Giancarlo Pellegrino, Zhiqiang Lin
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引用次数: 21

摘要

移动应用程序(App)的受欢迎程度呈爆炸式增长,数十亿智能手机用户使用谷歌Play Store或苹果App Store等市场提供的数百万款应用程序。虽然这些应用程序具有丰富而有用的功能,并向最终用户公开,但它们也包含未披露的隐藏行为,例如后门和黑名单,旨在阻止不需要的内容。在本文中,我们展示了输入验证行为——移动应用程序处理和响应用户输入数据的方式——可以作为发现此类隐藏功能的强大工具。因此,我们开发了一个工具InputScope,它可以自动检测用户输入验证的执行上下文和验证中涉及的内容,从而自动公开感兴趣的秘密。我们对超过15万款手机应用(包括各大应用商店的热门应用和手机自带的预装应用)进行了InputScope测试,发现12706款手机应用存在后门秘密,4028款手机应用存在黑名单秘密。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Automatic Uncovering of Hidden Behaviors From Input Validation in Mobile Apps
Mobile applications (apps) have exploded in popularity, with billions of smartphone users using millions of apps available through markets such as the Google Play Store or the Apple App Store. While these apps have rich and useful functionality that is publicly exposed to end users, they also contain hidden behaviors that are not disclosed, such as backdoors and blacklists designed to block unwanted content. In this paper, we show that the input validation behavior—the way the mobile apps process and respond to data entered by users—can serve as a powerful tool for uncovering such hidden functionality. We therefore have developed a tool, InputScope, that automatically detects both the execution context of user input validation and also the content involved in the validation, to automatically expose the secrets of interest. We have tested InputScope with over 150,000 mobile apps, including popular apps from major app stores and preinstalled apps shipped with the phone, and found 12,706 mobile apps with backdoor secrets and 4,028 mobile apps containing blacklist secrets.
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