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	<title>Comments on: AI and a Recruiting Site</title>
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	<link>http://carpepm.net/2006/03/ai-and-a-recruiting-site/</link>
	<description>seize the night</description>
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		<title>By: Brian</title>
		<link>http://carpepm.net/2006/03/ai-and-a-recruiting-site/comment-page-1/#comment-5</link>
		<dc:creator>Brian</dc:creator>
		<pubDate>Tue, 04 Apr 2006 02:02:15 +0000</pubDate>
		<guid isPermaLink="false">http://blog.zioncreation.com/?p=15#comment-5</guid>
		<description>Neural Nets are rather infant in comparison to the last topic for my class this semester. They learn very minimal amounts of details in a face. The actual solution you would want would be face recognition. 

This could be easily implemented as a biometric as long as you thoroughly trained the program. This consists of either making sure you scan your face in the exact same location (i.e. lighting, emotion on the face, and other details we normally don&#039;t consider), or perhaps you could generate a difference map to find your face in the image no matter the environmental situation.

I still have to get my hand dirty with computer vision topics. I should be able to give a better answer after the semester. It&#039;s definitely interesting stuff.</description>
		<content:encoded><![CDATA[<p>Neural Nets are rather infant in comparison to the last topic for my class this semester. They learn very minimal amounts of details in a face. The actual solution you would want would be face recognition. </p>
<p>This could be easily implemented as a biometric as long as you thoroughly trained the program. This consists of either making sure you scan your face in the exact same location (i.e. lighting, emotion on the face, and other details we normally don&#8217;t consider), or perhaps you could generate a difference map to find your face in the image no matter the environmental situation.</p>
<p>I still have to get my hand dirty with computer vision topics. I should be able to give a better answer after the semester. It&#8217;s definitely interesting stuff.</p>
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		<title>By: Austen</title>
		<link>http://carpepm.net/2006/03/ai-and-a-recruiting-site/comment-page-1/#comment-4</link>
		<dc:creator>Austen</dc:creator>
		<pubDate>Tue, 04 Apr 2006 00:46:41 +0000</pubDate>
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		<description>This sounds interesting. It got me thinking... 
Just out of curiosity how well do you think such a program could recognize a particular person&#039;s face? For say a level of biometric security for a laptop with a built in cam, but no built in fingerprint reader. 
Or more interesting, as a way to also detect faces it has not seen and store them into a database for monitoring who is using a console and how often?</description>
		<content:encoded><![CDATA[<p>This sounds interesting. It got me thinking&#8230;<br />
Just out of curiosity how well do you think such a program could recognize a particular person&#8217;s face? For say a level of biometric security for a laptop with a built in cam, but no built in fingerprint reader.<br />
Or more interesting, as a way to also detect faces it has not seen and store them into a database for monitoring who is using a console and how often?</p>
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