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A Robustness and Low Bit-Rate Image Compression Network for Underwater Acoustic Communication

机译:水下声通信的鲁棒性和低比特率图像压缩网络

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Image compression algorithm is an important technology in the process of image transmission. Algorithm faces more difficult challenges in underwater acoustic communication. Images are required to be transmitted at a low bit-rate due to the limited underwater bandwidth and the noisy underwater acoustic environment will cause errors like random bit flip or packet loss. Therefore, the performance of common compression algorithms (JPEG, BPG, etc.) will be greatly reduced. Based on deep) neural network (DNN), we propose an image compression algorithm that compresses the image texture and color separately for reducing the bit-rate. Moreover, we simulate the underwater acoustic environment and add different types of errors to compressed bit codes in our training process. Extensive experiments show that this training method improves the robustness of decoder and reconstruction performance. Besides, the algorithm is better than common compression algorithms and DNN based algorithms for underwater acoustic communication.
机译:图像压缩算法是图像传输过程中的一项重要技术。在水下声通信中,算法面临着更艰巨的挑战。由于水下带宽有限,要求图像以低比特率传输,嘈杂的水下声学环境将导致诸如随机比特翻转或数据包丢失之类的错误。因此,将大大降低常见压缩算法(JPEG,BPG等)的性能。基于深度神经网络(DNN),我们提出了一种图像压缩算法,该算法分别压缩图像的纹理和颜色以降低比特率。此外,我们在训练过程中模拟水下声学环境,并将不同类型的错误添加到压缩的位代码中。大量实验表明,该训练方法提高了解码器的鲁棒性和重构性能。此外,该算法优于用于水下声通信的普通压缩算法和基于DNN的算法。

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