Title
Semi-automatically labeling objects in images.
Abstract
Labeling objects in images plays a crucial role in many visual learning and recognition applications that need training data, such as image retrieval, object detection and recognition. Manually creating object labels in images is time consuming and, thus, becomes impossible for labeling a large image dataset. In this paper, we present a family of semi-automatic methods based on a graph-based semi-supervised learning algorithm for labeling objects in images. We first present SmartLabel that proposes to label images with reduced human input by iteratively computing the harmonic solutions to minimize a quadratic energy function on the Gaussian fields. SmartLabel tackles the problem of lacking negative data in the learning by embedding relevance feedback after the first iteration, which also leads to one limitation of SmartLabel-needing additional human supervision. To overcome the limitation and enhance SmartLabel, we propose SmartLabel-2 that utilizes a novel scheme to sample negative examples automatically, replace regular patch partitioning in SmartLabel by quadtree partitioning and applies image over-segmentation (superpixels) to extract smooth object contours. Evaluation on six diverse object categories have indicated that SmartLabel-2 can achieve promising results with a small amount of labeled data (e.g., 1%-5% of image size) and obtain close-to-fine extraction of object contours on different kinds of objects.
Year
DOI
Venue
2009
10.1109/TIP.2009.2017360
IEEE Transactions on Image Processing
Keywords
Field
DocType
object label,image over-segmentation,graph-based semi-supervised learning algorithm,harmonic functions,image size,diverse object category,labeling ob- jects,smartlabel,image retrieval,smooth object contour,object detection,superpixels.,large image dataset,quadtree,index terms—gaussian fields,object contour,image recognition,labeling,indexing terms,harmonic function,learning artificial intelligence,information retrieval,training data,semi supervised learning,data mining,image segmentation
Computer vision,Object detection,Semi-supervised learning,Pattern recognition,Computer science,Image processing,Image retrieval,Image segmentation,Feature extraction,Supervised learning,Artificial intelligence,Contextual image classification
Journal
Volume
Issue
ISSN
18
6
1057-7149
Citations 
PageRank 
References 
1
0.36
29
Authors
2
Name
Order
Citations
PageRank
Wen Wu151747.40
Jie Yang22856270.24