Child Porn 3 [JPG]
Here, yet again, is the same Time-Life child pornography picture, which is encrypted with the public keys of people I don't know from squat. Nonetheless, they are now co-conspirators in the Time-Life/Cypherpunks child pornography ring. Since they are unwitting participants in the spread of this filth across the internet, I would suggest that they contact law enforcement officials and offer to testify against the cypherpunks and employees of Time-Life in return for immunity or reduced sentences ending in ... -----BEGIN PGP MESSAGE----- Version: PGP for Personal Privacy 5.0 MessageID: ocOxykyVcWoyrQN2vOJ2T9mmTq48/8hk hQDMA7p625ZXl6gLAQX9HnpFayBZ6FQeROihy199W3TqvalvchuXr7tHLOHtkAzF 2oZchrULSG6lty6RhDl+QFHrjR1G+CvhRjlaeCgdQPf4p5aftX4wbO7vjuIR5lRy AdZaa28e+jmFHICifJJCzqBU21QoqRPdQAGBHx97q/DG7ePc3CVXSWgYFS1z4mw3 W5mmH+hWNDwuU+ud59P5PJyaLEwccNSFSgLbDJARziRsx2Hm9jQanNbqUlIRoG/G I2ARxBIPv5WOiBEAlqd7hQCMA6/vX3KXbtf5AQP/d1FY5zK+thdykCoXerzwJBcw zzSUzP56cRc/LCv8iOBoBmdI5QSvH5D+SaVURKUlfnn1dslfJ4v6idENAaszyrmm EOygBK1RQg5kBUKICSKEjZcvQoHxrA7CKc6AC3iJM9lmyUDLgcgkQ9t3FF7BJwZY BA+cwfk/p8TLfpXKbtmFAKgDpkUZM3r0u4UBBN9AimRvDgNVTPBhpBhWCAAH4vIO vgxqojUKJEdVKsez6U9fQ7FNTZZh3qkanvWmj06+6XUbJFYh8SOuNm2ONZCT0VTo 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The anonymous porn protagonist writes:
Here, yet again, is the same Time-Life child pornography picture, which is encrypted with the public keys of people I don't know from squat. Nonetheless, they are now co-conspirators in the Time-Life/Cypherpunks child pornography ring.
is keyid 0xD2DF803D this key?
Type Bits/KeyID Date User ID
pub 1024/D2DF803D 1995/08/13 Joseph Chamness
At 1:01 PM -0700 6/23/97, Adam Back wrote:
(Thinking of the AA case where the fedz mailed the target a child porn package and kicked the door in seconds after the package hit the door mat, before they even knew their mail had arrived, and busted them for "possession" of child porn.)
"I have a solution." (However, unlike Bell, my solution would not involve the roundabout charade of setting up some kind of betting market--as if the population at large would care about J. Random Narc. Under my solution, the cops who pulled this stunt of sending unsolicited porn and then raiding the house would be given a fair trial and then imprisoned for a lot longer than the Thomases will ultimately be imprisoned.) --Tim May There's something wrong when I'm a felon under an increasing number of laws. Only one response to the key grabbers is warranted: "Death to Tyrants!" ---------:---------:---------:---------:---------:---------:---------:---- Timothy C. May | Crypto Anarchy: encryption, digital money, tcmay@got.net 408-728-0152 | anonymous networks, digital pseudonyms, zero W.A.S.T.E.: Corralitos, CA | knowledge, reputations, information markets, Higher Power: 2^1398269 | black markets, collapse of governments. "National borders aren't even speed bumps on the information superhighway."
Here, yet again, is the same Time-Life child pornography picture, which is encrypted with the public keys of people I don't know from squat. Nonetheless, they are now co-conspirators in the Time-Life/Cypherpunks child pornography ring. Since they are unwitting participants in the spread of this filth across the internet, I would suggest that they contact law enforcement officials and offer to testify against the cypherpunks and employees of Time-Life in return for immunity or reduced sentences ending in ...
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participants (4)
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Adam Back
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lucifer@dhp.com
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Secret Squirrel
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Tim May