MaGGIe balances temporal consistency and detail preservation, outperforming SparseMat in accuracy and matching InstMatt's high-fidelity outputMaGGIe balances temporal consistency and detail preservation, outperforming SparseMat in accuracy and matching InstMatt's high-fidelity output

Video Instance Matting: Comparing Temporal Consistency and Detail Preservation

Abstract and 1. Introduction

  1. Related Works

  2. MaGGIe

    3.1. Efficient Masked Guided Instance Matting

    3.2. Feature-Matte Temporal Consistency

  3. Instance Matting Datasets

    4.1. Image Instance Matting and 4.2. Video Instance Matting

  4. Experiments

    5.1. Pre-training on image data

    5.2. Training on video data

  5. Discussion and References

\ Supplementary Material

  1. Architecture details

  2. Image matting

    8.1. Dataset generation and preparation

    8.2. Training details

    8.3. Quantitative details

    8.4. More qualitative results on natural images

  3. Video matting

    9.1. Dataset generation

    9.2. Training details

    9.3. Quantitative details

    9.4. More qualitative results

9.4. More qualitative results

For a more immersive and detailed understanding of our model’s performance, we recommend viewing the examples on our website which includes comprehensive results and comparisons with previous methods. Additionally, we have highlighted outputs from specific frames in Fig. 19.

\ Regarding temporal consistency, SparseMat and our framework exhibit comparable results, but our model demonstrates more accurate outcomes. Notably, our output maintains a level of detail on par with InstMatt, while ensuring consistent alpha values across the video, particularly in background and foreground regions. This balance between detail preservation and temporal consistency highlights the advanced capabilities of our model in handling the complexities of video instance matting.

\ For each example, the first-frame human masks are generated by r101 fpn 400e and propagated by XMem for the rest of the video.

\ Table 15. Our framework also reduces the errors of trimap propagation baselines. When replacing those models’ matte decoders with ours, the number in all error metrics was reduced by a large margin. Gray rows denote the module from public weights without retraining on our V-HIM2K5 dataset.

\

\

\

:::info Authors:

(1) Chuong Huynh, University of Maryland, College Park (chuonghm@cs.umd.edu);

(2) Seoung Wug Oh, Adobe Research (seoh,jolee@adobe.com);

(3) Abhinav Shrivastava, University of Maryland, College Park (abhinav@cs.umd.edu);

(4) Joon-Young Lee, Adobe Research (jolee@adobe.com).

:::


:::info This paper is available on arxiv under CC by 4.0 Deed (Attribution 4.0 International) license.

:::

\

Disclaimer: The articles reposted on this site are sourced from public platforms and are provided for informational purposes only. They do not necessarily reflect the views of MEXC. All rights remain with the original authors. If you believe any content infringes on third-party rights, please contact service@support.mexc.com for removal. MEXC makes no guarantees regarding the accuracy, completeness, or timeliness of the content and is not responsible for any actions taken based on the information provided. The content does not constitute financial, legal, or other professional advice, nor should it be considered a recommendation or endorsement by MEXC.

You May Also Like

Trump criticized the unusual phenomenon of "good news not driving prices up" and warned dissidents not to even think about taking the helm of the Federal Reserve.

Trump criticized the unusual phenomenon of "good news not driving prices up" and warned dissidents not to even think about taking the helm of the Federal Reserve.

PANews reported on December 24th that US President Trump praised the third-quarter GDP data on social media, noting that GDP growth reached 4.2%, far exceeding
Share
PANews2025/12/24 08:16
Is Doge Still The Best Crypto Investment, Or Will Pepeto Make You Rich In 2025

Is Doge Still The Best Crypto Investment, Or Will Pepeto Make You Rich In 2025

The post Is Doge Still The Best Crypto Investment, Or Will Pepeto Make You Rich In 2025 appeared on BitcoinEthereumNews.com. Crypto News 18 September 2025 | 13:39 Is Dogecoin actually running out of gas, after making people millionaires overnight? As investors hunt for the best crypto to buy now and the best crypto to invest in 2025, Dogecoin still owns the meme spotlight, yet its upside looks capped according to today’s Dogecoin price prediction. Focus is shifting toward projects that marry community with real on chain utility. People searching best crypto to buy now want shipped products, audits, and transparent tokenomics. That frames the honest matchup for this cycle, Dogecoin versus Pepeto. Meet Pepeto, an Ethereum based meme coin built with live rails, PepetoSwap for zero fee trading and Pepeto Bridge for smooth cross chain moves. By blending story with tools people can touch today, and speaking directly to crypto presale 2025 demand, Pepeto puts utility, clarity, and distribution first. In a market where older meme coins risk drifting on sentiment, Pepeto’s delivery gives it a credible seat in the best crypto investment debate. First, here is why Dogecoin may be fading. Dogecoin Price Prediction Is Dogecoin Losing Momentum Remember when Dogecoin made crypto feel effortless. In 2013, Doge turned an internet joke into money and a movement that welcomed everyone. A decade later the market is tougher and the relentless tailwind is gone, sentiment is choppier and patience matters. With Doge near $0.268, the setup reads bearish to neutral for the next few weeks. If the $0.26 shelf holds on daily closes, expect choppy range trading toward $0.29 to $0.30 where rallies keep stalling. Lose $0.26 and momentum often slides into $0.245 with risk of a deeper probe toward $0.22 to $0.21. Close back above $0.30 and the downside bias is likely neutralized, opening room for a squeeze into the low $0.30s. Beyond the price view, Dogecoin still centers…
Share
BitcoinEthereumNews2025/09/18 18:56
Russia Proposes Crypto Access for Retail Investors via Knowledge Tests, $3,834 Annual Cap

Russia Proposes Crypto Access for Retail Investors via Knowledge Tests, $3,834 Annual Cap

Russia's central bank has submitted a draft proposal that would permit non-qualified investors to purchase certain cryptocurrencies after passing a mandatory knowledge test, with annual purchases capped at approximately $3,834. The proposal represents a significant shift in Russia's approach to cryptocurrency regulation, balancing controlled retail access with investor protection measures amid the country's evolving digital asset policy.
Share
MEXC NEWS2025/12/24 10:27