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US Citizens Reportedly Dismantling and Destroying Flock Surveillance Cameras Nationwide

Reports indicate a growing trend across the United States where individuals are actively dismantling and destroying Flock surveillance cameras. This activity suggests public resistance or concern regarding the deployment and use of these surveillance technologies. The original news content, published on February 20, 2026, from Hacker News, primarily consists of 'Comments,' implying that the core information is derived from public discourse or observations rather than a detailed journalistic report. The precise motivations behind these actions and the scale of the incidents are not detailed in the provided source material, which only mentions the activity and its widespread nature.

Hacker News

The original news information, published on February 20, 2026, by Hacker News, highlights a phenomenon occurring across the United States: people are reportedly dismantling and destroying Flock surveillance cameras. The source content explicitly states 'Comments,' suggesting that this information might be derived from user discussions, observations, or anecdotal evidence shared within the Hacker News community or similar platforms. While the news title clearly indicates the nature of the activities – the dismantling and destruction of these specific surveillance devices – the provided original content does not offer further details regarding the reasons behind these actions, the specific locations where these incidents are occurring, the frequency of such events, or any official responses to these activities. The brevity of the original content means that a comprehensive understanding of the context, scale, and implications of these actions is not available from this source alone. It merely points to the existence of such activities nationwide.

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