Recent works have shown that the task of wireless transmission of images can be learned with the use of machine learning techniques. Very promising results in end-to-end image quality, superior to popular digital schemes that utilize source and channel coding separation, have been demonstrated through the training of an autoencoder, with a non-trainable channel layer in the middle. However, these methods assume that any complex value can be transmitted over the channel, which can prevent the application of the algorithm in scenarios where the hardware or protocol can only admit certain sets of channel inputs, such as the use of a digital constellation. Herein, we propose DeepJSCC-Q, an end-to-end optimized joint source-channel coding scheme for wireless image transmission, which is able to operate with a fixed channel input alphabet. We show that DeepJSCC-Q can achieve similar performance to models that use continuous-valued channel input. Importantly, it preserves the graceful degradation of image quality observed in prior work when channel conditions worsen, making DeepJSCC-Q much more attractive for deployment in practical systems.
翻译:最近的工作表明,通过使用机器学习技术,可以学习无线传输图像的任务。在终端到终端图像质量方面,优于使用源码和频道编码分离的流行数字方案,通过培训一个自动编码器,在中间有一个不可培训的频道层,显示了非常有希望的结果。然而,这些方法假定,任何复杂的价值都可以通过频道传输,这可以防止在硬件或协议只能接受某些频道输入的组合,例如使用数字星座的情况下应用算法。在这里,我们提议为无线图像传输设计一个终端到终端优化的联合源频道编码方案,能够用固定的频道输入字母进行操作。我们表明,DeepJSCC-Q可以取得与使用持续有价值的频道输入的模型类似的性能。重要的是,它保留了在频道状况恶化时在先前工作中观察到的图像质量的优劣性退化,使DeepJSC-Q在实际系统中的部署更具吸引力。