Transaction

baf329bf91aeedca4574a855c2cae09f45171759cd07f9d85859d59aab42ea4a
Timestamp (utc)
2024-06-26 06:43:45
Fee Paid
0.00000005 BSV
(
0.00322839 BSV
-
0.00322834 BSV
)
Fee Rate
2.491 sat/KB
Version
1
Confirmations
83,885
Size Stats
2,007 B

3 Outputs

Total Output:
0.00322834 BSV
  • jmetaB032b2f773980a1daae1e0fbab2422a2299b07e94d569bae877551d092b77da3150@104e04f4dc7bbb58b675a0be8ec8a2392cd828cadc0c1b85347e2d4ab003150erss.item metarss.netMH<item> <title>Video Inpainting Localization with Contrastive Learning</title> <link>https://arxiv.org/abs/2406.17628</link> <description>arXiv:2406.17628v1 Announce Type: cross Abstract: Deep video inpainting is typically used as malicious manipulation to remove important objects for creating fake videos. It is significant to identify the inpainted regions blindly. This letter proposes a simple yet effective forensic scheme for Video Inpainting LOcalization with ContrAstive Learning (ViLocal). Specifically, a 3D Uniformer encoder is applied to the video noise residual for learning effective spatiotemporal forensic features. To enhance the discriminative power, supervised contrastive learning is adopted to capture the local inconsistency of inpainted videos through attracting/repelling the positive/negative pristine and forged pixel pairs. A pixel-wise inpainting localization map is yielded by a lightweight convolution decoder with a specialized two-stage training strategy. To prepare enough training samples, we build a video object segmentation dataset of 2500 videos with pixel-level annotations per frame. Extensive experimental results validate the superiority of ViLocal over state-of-the-arts. Code and dataset will be available at https://github.com/multimediaFor/ViLocal.</description> <guid isPermaLink="false">oai:arXiv.org:2406.17628v1</guid> <category>cs.CV</category> <category>cs.CR</category> <arxiv:announce_type>cross</arxiv:announce_type> <dc:rights>http://arxiv.org/licenses/nonexclusive-distrib/1.0/</dc:rights> <dc:creator>Zijie Lou, Gang Cao, Man Lin</dc:creator> </item>
    https://whatsonchain.com/tx/baf329bf91aeedca4574a855c2cae09f45171759cd07f9d85859d59aab42ea4a