As people age, they want to remember things from his or her past. The mind ages as the body does. As one grows older, the physical and mental changes start to appear. This paper will evaluate face recognition, identification, and classification on it. The second part will explain the role of concepts and categories in face recognition. The paper will evaluate the role of encoding and retrieval using long-term memory and the effects of face recognition.
Finally, the possibly of errors can happen with race recognition. Face Recognition, Identification, and Classification Over the past decade or so face recognition has become a popular area of research in computers and using most successful applications to develop further. Computer applications are available for face recognition. Other programs used are voice recognition, handwriting recognition, intelligent tutoring systems, writing, and computer supported learning. Voice recognition is an important tool for student’s developmental disabilities that no other standard teaching methods work.
Hand writing recognition is the software that interprets the writing down on an electronic tablet. Intelligent tutoring systems are computer applications that let students answer questions. Writing assessment can read a student’s essay. Computer supported collaborative learning is to work with groups in a classroom. Faces are important because people are social creatures. Faces help people deal with social interactions that are parts of his or her lives. As people, we gather information about identity, gender, age, ethnicity, and emotions.
The Essay on Voice Recognition Technology Computers People
The future is here! Computers deciphering speech, cars commandeered by satellite and miracles of miniaturization are a reality. Are you ready to take advantage of this technology Voice recognition along with these other new advances in technology are going to vastly increase the accessibility and function of personal computers. As viable working speech recognition software reaches the people the ...
It helps to read information on faces as a component, understand a person’s perception, and is sensitive to the differences between visual patterns. “Our face recognition skills are particularly impressive and our ability to discriminate thousands of faces has often been attributed to expertise acquired through extensive experience discriminating faces,” (Jeffery & Rhodes, 2011, p. 799).
Face recognition is to find any face in any given images based on his or her facial features using elements of distinction. Correlation method is the first thought to begin with face recognition. The two important approaches for face recognition are: geometric (feature based) and photometric (view based),” (Mishna, Swain, & Dash, 2012, p. 143).
Researchers developed Principal Components Analysis (PCA), Linear Discriminant Analysis (LDA), and Elastic Bunch Graph Matching (EBGM).
PCA uses images that are the same size and line-up the eyes and mouth. PCA uses eigenfaces. LDA “approach maximizes the variance across users called the between-class variance and minimizes the variance within classes called within class variance,” (Mishna, Swain, & Dash, 2012, p. 44).
EBGM relies on real face images using variations in illumination, pose, and expressions. Concepts and Categories in Face Recognition It appears face recognition wants to identity facial features. Trying to verify new face images belongs to one whose image is stored aims to identity in case recognition. A person is comparing others stored in a database, classifying as a well-known or as unknown. Face techniques describes in three categories template-based, featured-based, and appearance-based.
Temple-based method uses two-dimensional along with facial borders and organs. “Feature-based method considers the positions and sizes of the facial organs, nose, mouth, etc. , in the face representation,” (Mishra, Swain, & Dash, 2012, p. 146).
The Dissertation on Video-Based Framework for Face Recognition in Video
... d) Figure 2: Face image used for face recognition in documents (a), face images obtained from video (b,c), and face model suitable for video-based face processing (d). available ... of the facial orientation within the image plane, and b) eye alignment. Task 4. The receptor stimulus vector R of binary feature attributes ...
Appearance-based puts the image in a low dimensional to obtain representation. Eigen faces approach uses approximate the face in lower dimension. Algorithm collects images, define, calculate distribution, face recognition, input, calculate key, classification of image, and face recognition. Our face recognition skills are particularly impressive and our ability to discriminate thousands of faces has often been attributed to expertise acquired through extensive experience discriminating faces.
Using variations in lighting and viewpoints, and other conditions using everyday life face recognitions remains accurate. Two factors affecting the ability to recognize faces in everyday life is facial motion and race. Facial motion can be useful in providing cues to identity shape and texture of faces. “In the past 50 years, research has consistently shown that people are extraordinary face processors, capable of recognizing hundreds of faces across lengthy stretches of time,” (Papesh & Goldlinger, 2009, p. 253).
Research has shown people are relatively poor learning and remembering faces of other races.
Errors As with studies errors occur. Research done “the delusional misidentification syndromes reviewed has been driven by the assumption that dorsal and ventral neuroanatomical visual processing streams subserve face recognition,” (Breen, Caine, & Coltheart, 2000, p. 69).
As research continues it has shown that single anatomical pathway the ventral visual-limbic pathway. To recognize one’s own face in a mirror reflects an ability to distinguish the self from others. “Self-face recognition in human adults is characterized by faster responses to self-face than to other’s faces.