Towards Semantic Communications: Deep Learning-Based Image Semantic Coding
Semantic communications has received growing interest since it can remarkably reduce the amount of data to be transmitted without missing critical information. Most existing works explore the semantic encoding and transmission for text and apply techniques in Natural Language Processing (NLP) to int...
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Zusammenfassung: | Semantic communications has received growing interest since it can remarkably
reduce the amount of data to be transmitted without missing critical
information. Most existing works explore the semantic encoding and transmission
for text and apply techniques in Natural Language Processing (NLP) to interpret
the meaning of the text. In this paper, we conceive the semantic communications
for image data that is much more richer in semantics and bandwidth sensitive.
We propose an reinforcement learning based adaptive semantic coding (RL-ASC)
approach that encodes images beyond pixel level. Firstly, we define the
semantic concept of image data that includes the category, spatial arrangement,
and visual feature as the representation unit, and propose a convolutional
semantic encoder to extract semantic concepts. Secondly, we propose the image
reconstruction criterion that evolves from the traditional pixel similarity to
semantic similarity and perceptual performance. Thirdly, we design a novel
RL-based semantic bit allocation model, whose reward is the increase in
rate-semantic-perceptual performance after encoding a certain semantic concept
with adaptive quantization level. Thus, the task-related information is
preserved and reconstructed properly while less important data is discarded.
Finally, we propose the Generative Adversarial Nets (GANs) based semantic
decoder that fuses both locally and globally features via an attention module.
Experimental results demonstrate that the proposed RL-ASC is noise robust and
could reconstruct visually pleasant and semantic consistent image, and saves
times of bit cost compared to standard codecs and other deep learning-based
image codecs. |
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DOI: | 10.48550/arxiv.2208.04094 |