APT traffic detection is an important task in network security domain, which is of great significance in the field of enterprise security. Most APT traffic uses encrypted communication protocol as data transmission medium, which greatly increases the difficulty of detection. This paper analyzes the existing problems of current APT encrypted traffic detection methods based on machine learning, and proposes an APT encrypted traffic detection method based on two parties and multi-session. This method only needs to extract a small amount of features, such as session sequence, session time interval, upstream and downstream data size, and convert them into images. Then convolutional neural network method can be used to realize image recognition. Thus, network traffic identification can be realized too. In the preliminary test of five experiments, this method achieves good experimental results, which verifies the effectiveness of the method.
翻译:APT交通探测是网络安全领域的一项重要任务,在企业安全领域非常重要,大多数APT交通使用加密通信协议作为数据传输媒介,这大大增加了检测难度。本文分析了目前APT基于机器学习的加密交通检测方法的现有问题,并提出了基于两方和多部分的APT加密交通检测方法。这种方法只需要提取少量的特征,如会议顺序、会话间隔、上游和下游数据大小,然后将其转换成图像。然后,可使用神经神经网络方法实现图像识别。因此,网络交通识别也可以实现。在五个实验的初步测试中,这种方法取得了良好的实验结果,从而验证了方法的有效性。</s>