Transaction

f8dbbcdcc72c96ffa8f96ea1a5a641a64fdaaee52e4fbbab68602d0f6c63f274
Timestamp (utc)
2024-09-04 07:06:12
Fee Paid
0.00000006 BSV
(
0.00310756 BSV
-
0.00310750 BSV
)
Fee Rate
2.293 sat/KB
Version
1
Confirmations
74,549
Size Stats
2,616 B

3 Outputs

Total Output:
0.00310750 BSV
  • jmetaB03f6b9b37e0285844a3bcddca4362f7c56f0e9f849dc22af7fbce515337e0ea08d@104e04f4dc7bbb58b675a0be8ec8a2392cd828cadc0c1b85347e2d4ab003150erss.item metarss.netM¨<item> <title>Achieving Resolution-Agnostic DNN-based Image Watermarking: A Novel Perspective of Implicit Neural Representation</title> <link>https://arxiv.org/abs/2405.08340</link> <description>arXiv:2405.08340v2 Announce Type: replace Abstract: DNN-based watermarking methods are rapidly developing and delivering impressive performances. Recent advances achieve resolution-agnostic image watermarking by reducing the variant resolution watermarking problem to a fixed resolution watermarking problem. However, such a reduction process can potentially introduce artifacts and low robustness. To address this issue, we propose the first, to the best of our knowledge, Resolution-Agnostic Image WaterMarking (RAIMark) framework by watermarking the implicit neural representation (INR) of image. Unlike previous methods, our method does not rely on the previous reduction process by directly watermarking the continuous signal instead of image pixels, thus achieving resolution-agnostic watermarking. Precisely, given an arbitrary-resolution image, we fit an INR for the target image. As a continuous signal, such an INR can be sampled to obtain images with variant resolutions. Then, we quickly fine-tune the fitted INR to get a watermarked INR conditioned on a binary secret message. A pre-trained watermark decoder extracts the hidden message from any sampled images with arbitrary resolutions. By directly watermarking INR, we achieve resolution-agnostic watermarking with increased robustness. Extensive experiments show that our method outperforms previous methods with significant improvements: averagely improved bit accuracy by 7%$\sim$29%. Notably, we observe that previous methods are vulnerable to at least one watermarking attack (e.g. JPEG, crop, resize), while ours are robust against all watermarking attacks.</description> <guid isPermaLink="false">oai:arXiv.org:2405.08340v2</guid> <category>cs.CR</category> <category>cs.CV</category> <pubDate>Wed, 04 Sep 2024 00:00:00 -0400</pubDate> <arxiv:announce_type>replace</arxiv:announce_type> <dc:rights>http://creativecommons.org/licenses/by/4.0/</dc:rights> <dc:creator>Yuchen Wang, Xingyu Zhu, Guanhui Ye, Shiyao Zhang, Xuetao Wei</dc:creator> </item>
    https://whatsonchain.com/tx/f8dbbcdcc72c96ffa8f96ea1a5a641a64fdaaee52e4fbbab68602d0f6c63f274