

Detail
Overview :
Detail is an iPad-exclusive app designed for TikTok enthusiasts, podcast creators, and Instagram influencers. It integrates powerful video editors, convenient captioning tools, smart subtitles, and cutting-edge camera technology. Through AI-powered editing features and instant video presets, creating stunning videos becomes fast and easy.
Target Users :
Detail APP is perfect for content creators, whether you're looking to start a podcast, capture the next viral dance video, or share knowledge through tutorials - Detail is your creative partner.
Use Cases
Podcast creators use Detail for synchronized audio and video editing, improving podcast quality.
TikTok users leverage Detail's AI captioning to increase video interactivity and viewership.
Instagram influencers utilize Detail's green screen effects and filters to produce high-quality Reels videos.
Features
AI-powered captions and subtitling, enhancing video message delivery.
Background replacement and color grading options, customizing video visual effects.
Audio enhancement features, quickly eliminating unwanted noise and echo.
Multi-camera collaboration for creating multi-angle videos, elevating content professionalism.
Advanced green screen effects and cinematic filters, enhancing video professional aesthetics.
Seamless integration with platforms like Zoom, Loom, Twitch, and Whereby, boosting live streaming experiences.
How to Use
Download and install the Detail APP.
Select a project preset suitable for your video type.
Use the built-in AI captioning feature to input text and generate subtitles automatically.
Choose background replacement or apply color grading to personalize video appearance.
Utilize audio enhancement features to optimize video audio quality.
Switch cameras or apply different filter effects if needed.
After editing, export and share your video on social platforms.
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