Abstract:
Subspace models have been very successful at modeling the appearance of structured image datasets when the visual objects have been aligned in the images (e.g., faces). E...Show MoreMetadata
Abstract:
Subspace models have been very successful at modeling the appearance of structured image datasets when the visual objects have been aligned in the images (e.g., faces). Even with extensions that allow for global transformations or dense warps of the image, the set of visual objects whose appearance may be modeled by such methods is limited. They are unable to account for visual objects where occlusion leads to changing visibility of different object parts (without a strict layered structure) and where a one-to-one mapping between parts is not preserved. For example bunches of bananas contain different numbers of bananas but each individual banana shares an appearance subspace. In this work we remove the image space alignment limitations of existing subspace models by conditioning the models on a shape dependent context that allows for the complex, non-linear structure of the appearance of the visual object to be captured and shared. This allows us to exploit the advantages of subspace appearance models with non-rigid, deformable objects whilst also dealing with complex occlusions and varying numbers of parts. We demonstrate the effectiveness of our new model with examples of structured inpainting and appearance transfer.
Date of Conference: 07-12 June 2015
Date Added to IEEE Xplore: 15 October 2015
ISBN Information:
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- IEEE Keywords
- Index Terms
- Object Appearance ,
- Image Dataset ,
- Visual Object ,
- Deformable Objects ,
- Model Parameters ,
- Training Set ,
- Statistical Models ,
- Functional Form ,
- Linear Discriminant Analysis ,
- Unknown Parameters ,
- Face Images ,
- Images In Set ,
- Low-resolution Images ,
- Least Squares Problem ,
- Pixel Coordinates ,
- Face Detection ,
- Semantic Labels ,
- Hidden Variables ,
- Deformation Field ,
- Translation Vector ,
- Context Vector ,
- Appearance Model ,
- Building Facades ,
- Image Inpainting ,
- Basis Matrix ,
- Color Channels ,
- Color Space ,
- Mean Vector ,
- Object Dataset
Keywords assist with retrieval of results and provide a means to discovering other relevant content. Learn more.
- IEEE Keywords
- Index Terms
- Object Appearance ,
- Image Dataset ,
- Visual Object ,
- Deformable Objects ,
- Model Parameters ,
- Training Set ,
- Statistical Models ,
- Functional Form ,
- Linear Discriminant Analysis ,
- Unknown Parameters ,
- Face Images ,
- Images In Set ,
- Low-resolution Images ,
- Least Squares Problem ,
- Pixel Coordinates ,
- Face Detection ,
- Semantic Labels ,
- Hidden Variables ,
- Deformation Field ,
- Translation Vector ,
- Context Vector ,
- Appearance Model ,
- Building Facades ,
- Image Inpainting ,
- Basis Matrix ,
- Color Channels ,
- Color Space ,
- Mean Vector ,
- Object Dataset