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The screenless Camp Snap 2 is slimmer and comes with more filters
The new Camp Snap 2 is 15 percent slimmer than the original version. Camp Snap After expanding its offerings to video with the CS-8 inspired by Kodak and Canon's retro Super 8mm film cameras, Camp Snap is returning to its roots. The Camp Snap 2 is a sequel to the company's first screenless digital point-and-shoot camera that updates the original with a slimmer design, faster performance, filters available right out of the box, and new features making it easier for kids to use.
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