Software-update - Snagit 2026.1.1
TechSmith heeft versie 2026.1.1 van Snagit uitgebracht. Met dit programma, dat voor zowel Windows als macOS beschikbaar is, kunnen plaatjes, tekst, bewegende beelden en webpagina's worden afgevangen en bewerkt. Zo kunnen er effecten als perspectief, spotlight en magnify op worden losgelaten. Verder kunnen ter verduidelijking teksten, pijlen en cirkels worden aangebracht. De screenshots kunnen als afbeeldingen worden opgeslagen of direct in diverse programma's zoals Word en PowerPoint worden geïmporteerd. In deze uitgave is de ocr-licentie bijgewerkt, die nodig is voor diverse tekstbewerkingen. What's New in 2026.1.1
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