Title
A study on recognizing non-artistic face sketches
Abstract
Face sketches are being used in eyewitness testimonies for about a century. These sketches are crucial in finding suspects when no photo is available, but a mental image in the eyewitness's mind. However, research shows that current procedures used for eyewitness testimonies have two main problems. First, they can significantly disturb the memories of the eyewitness. Second, in many cases, these procedures result in face images far from their target faces. These two problems are related to the plasticity of the human visual system and the differences between face perception in humans (holistic) and current methods of sketch production (piecemeal). In this paper, we present some insights for more realistic sketch to photo matching. We describe how to retrieve identity specific information from crude sketches, directly drawn by the non-artistic eyewitnesses. The sketches we used merely contain facial component outlines and facial marks (e.g. wrinkles and moles). We compare results of automatically matching two types sketches (trace-over and user-provided, 25 each) to four types of faces (original, locally exaggerated, configurally exaggerated, and globally exaggerated, 249 each), using two methods (PDM distance comparison and PCA classification). Based on our results, we argue that for automatic non-artistic sketch to photo matching, the algorithms should compare the user-provided sketches with globally exaggerated faces, with a soft constraint on facial marks, to achieve the best matching rates. This is because the user-provided sketch from the user's mental image, seems to be caricatured both locally and configurally.
Year
DOI
Venue
2011
10.1109/WACV.2011.5711509
WACV
Keywords
Field
DocType
face sketch,non-artistic face sketch,mental image,facial mark,matching rate,crude sketch,exaggerated face,user-provided sketch,eyewitness testimony,automatic non-artistic sketch,photo matching,face recognition,face,silicon,human visual system,image segmentation,principal component analysis,image classification,face perception,image reconstruction
Computer vision,Facial recognition system,Pattern recognition,Face perception,Human visual system model,Computer science,Image segmentation,Mental image,Specific-information,Artificial intelligence,Contextual image classification,Sketch
Conference
Citations 
PageRank 
References 
1
0.35
9
Authors
2
Name
Order
Citations
PageRank
Hossein Nejati1325.29
Terence Sim22562169.42