Point Cloud-Assisted Neural Image Compression
High-efficient image compression is a critical requirement. In several scenarios where multiple modalities of data are captured by different sensors, the auxiliary information from other modalities are not fully leveraged by existing image-only codecs, leading to suboptimal compression efficiency. I...
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Zusammenfassung: | High-efficient image compression is a critical requirement. In several
scenarios where multiple modalities of data are captured by different sensors,
the auxiliary information from other modalities are not fully leveraged by
existing image-only codecs, leading to suboptimal compression efficiency. In
this paper, we increase image compression performance with the assistance of
point cloud, which is widely adopted in the area of autonomous driving. We
first unify the data representation for both modalities to facilitate data
processing. Then, we propose the point cloud-assisted neural image codec
(PCA-NIC) to enhance the preservation of image texture and structure by
utilizing the high-dimensional point cloud information. We further introduce a
multi-modal feature fusion transform module (MMFFT) to capture more
representative image features, remove redundant information between channels
and modalities that are not relevant to the image content. Our work is the
first to improve image compression performance using point cloud and achieves
state-of-the-art performance. |
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DOI: | 10.48550/arxiv.2412.11771 |