This non-provisional application claims priority under 35 U.S.C. §119(a) on Patent Application No(s). 096151599 filed in Taiwan, R.O.C. on Dec. 31, 2007 the entire contents of which are hereby incorporated by reference.
1. Field of Invention
The present invention relates to a face detection method, and more particularly to a face detection method for detecting a face in a picture under detection at different transposed positions.
2. Related Art
In recent years, human facial recognition systems have paid great attention from research scholars and the industry and have been deeply expected to show excellent performance on public security or door-forbidden systems. However, such kinds of systems are always influenced by external factors such as light rays or complex textures, and thus reducing a success rate of recognition.
In order to solve the above influences of the external factors, it is suggested to use different image features to effectively detect a face in a picture under detection. In general, the most common face detection method utilizes a learning model to memorize multiple pictures to be detected. The learning model learns to recognize if the pictures under detection contain the preset image features according to the preset image features. Both the active learning architecture, for example, a neural network, an expert system, a fuzzy system, and the classified learning architecture, for example, a support vector machine (SVM), a principal components analysis (PCA), a SNoW method, a boosting method need to perform learning behaviors according to the set image features. Therefore, how to create the learning model and select proper image features are crucial for the face detection determination.
In order to distinguish a face from a background in a picture under detection, a Haar-like algorithm is often utilized to retrieve facial features. The Haar-like algorithm is a method for performing a feature processing on a textural directionality of patterns. Therefore, the Haar-like algorithm can effectively distinguish the face from the complex background. Also because the Haar-like algorithm depends on the textural directionality in the picture under detection, when the picture under detection is transposed to different directions, e.g., transposed by 90, 180 or 270 degrees, the original training samples obtained by the Haar-like algorithm would not be applicable to the transposed picture under detection.
In order to detect the face in the picture under detection at different transposed positions, the Haar-like algorithm is utilized again to perform a learning training on the picture under detection at different transposed positions repeatedly. In this manner, the memory space as well as the operation time is greatly increased.
Additionally, in order to determine a size of the face, an ellipse mask selection method is generally used to determine a size of area of the face in the picture under detection. In an edge image with good inspected quality, contours of the face and head portions can be regarded to be approximately elliptical shaped. Referring to
In view of the above problems, the present invention is mainly directed to a multidirectional face detection method for detecting a face in a picture under detection at different transposed positions.
In order to achieve the above objectives, the multidirectional face detection method disclosed in the present invention includes the following steps. A selecting window is set to sequentially select different sub-image patterns from the picture under detection. A facial weight is calculated according to a feature value of each of pixels in the sub-image pattern selected by the current selected selecting window. A facial edge weight is calculated and the calculation is made on the picture under detection according to a gradient value of each of the pixels in the sub-image pattern selected by the current selected selecting window to determine if this part of area of the picture under detection has any facial boundaries. A profile detection is performed to respectively mark the facial boundaries in the sub-image patterns with a plurality of arc segments respectively for the sub-image patterns.
The present invention determines the probability that the picture under detection has a face by use of the weights of facial features and facial edges included in various sub-image patterns and marks an appearance of the face in the picture under detection by means of the profile detection. Thus, the previous training results can also be used in picture under detection after transposed without discrimination. The face in the picture under detection can be detected without training the transposed picture under detection again.
The present invention will become more fully understood from the detailed description given herein below for illustration only, and thus are not limitative of the present invention, and wherein:
a is a schematic view of circling a face by use of an ellipse mask according to the prior art;
b is a schematic view of circling a face by use of an ellipse mask according to the prior art;
a is a corresponding relationship diagram of ranking of various sub-image patterns and feature values of a face;
b is a corresponding relationship diagram of ranking of various sub-image patterns and feature values of a face;
a is a schematic view of circling a face by use of arc segments according to the present invention;
b is a schematic view of circling a face by use of arc segments according to the present invention; and
The present invention provides a multidirectional face detection method for detecting an area of a face when a picture under detection is at different transposed positions. In this embodiment, the picture under detection is respectively transposed by 90, 180 and 270 degrees, which is first described herein. Preferred embodiments of the present invention include the following steps.
Step a
A selecting window is set, so as to sequentially select different sub-image patterns from the picture under detection. Referring to
Step b
A facial weight is calculated and the facial feature weight is calculated according to a feature value of each of pixels in the selecting window 220.
Step c
A facial edge weight is calculated and the calculation is made on the picture 240 under detection according to a color value of each of the pixels in the current selected selecting window 220 to determine if this part of area of the picture 240 under detection has any facial boundaries.
A training will be performed before this step of calculating the facial feature weight and the facial edge weight. A boosting algorithm is used to perform the ranking training on feature values of multiple different facial pictures under detection to obtain a feature model according to training results. Feature values of other pictures 240 to be detected are ranked in a prioritized order according to this feature model.
In this embodiment, colors are utilized for illustration. If depth variations of gray level values are utilized as feature values of various sub-image patterns 230 of the picture 240 under detection, the current selecting window 220 will obtain a higher facial similarity if the current selecting window 220 has more correct features of the face 210. Each of the sub-image patterns 230 has a size of 24*24 pixels, i.e., the sub-image pattern 230 has 576 pixels. If color depth variations of each of the pixels are used as feature values, one sub-image pattern has (24−2)×(24−2)=484 feature values. Referring to
Step d
A profile detection is performed to respectively mark the facial boundaries in the sub-image patterns 230 with a plurality of arc segments 410 respectively for the sub-image patterns 230 having the facial boundaries. Although the face 210 can be regarded to be an approximately elliptical shape, a part of the areas of the face 210 is unable to be circled if a conventional ellipse mask is used to circle. Therefore, referring to
In order to clarify an operation flow of the present invention, referring to
The present invention determines an area of the face 210 in the picture under detection by use of the facial feature weight and the facial edge weight included in various sub-image patterns 230 and marks an appearance of the face 210 in the picture 240 under detection by use of the profile detection by utilizing facial edge weight. Thus, the previous training results can also be used in the picture 240 under detection after transposed without discrimination. The face 210 in the picture 240 under detection can be detected without training the transposed picture 240 under detection again.
Number | Date | Country | Kind |
---|---|---|---|
96151599 A | Dec 2007 | TW | national |
Number | Name | Date | Kind |
---|---|---|---|
5550928 | Lu et al. | Aug 1996 | A |
5561718 | Trew et al. | Oct 1996 | A |
5629752 | Kinjo | May 1997 | A |
6016148 | Kang et al. | Jan 2000 | A |
6173069 | Daly et al. | Jan 2001 | B1 |
6529630 | Kinjo | Mar 2003 | B1 |
7035456 | Lestideau | Apr 2006 | B2 |
7916897 | Corcoran et al. | Mar 2011 | B2 |
20010053292 | Nakamura | Dec 2001 | A1 |
20050147278 | Rui et al. | Jul 2005 | A1 |
Number | Date | Country | |
---|---|---|---|
20090169066 A1 | Jul 2009 | US |