Character-focused Video Thumbnail Retrieval
This work addresses the need for automated, character-focused thumbnail generation in video platforms, representing an incremental improvement over existing methods.
The paper tackles the problem of selecting video frames as thumbnails by focusing on characters, evaluating faces based on acceptable facial expressions and character prominence/interactions, resulting in a method that scores frames to identify suitable thumbnail candidates.
We explore retrieving character-focused video frames as candidates for being video thumbnails. To evaluate each frame of the video based on the character(s) present in it, characters (faces) are evaluated in two aspects: Facial-expression: We train a CNN model to measure whether a face has an acceptable facial expression for being in a video thumbnail. This model is trained to distinguish faces extracted from artworks/thumbnails, from faces extracted from random frames of videos. Prominence and interactions: Character(s) in the thumbnail should be important character(s) in the video, to prevent the algorithm from suggesting non-representative frames as candidates. We use face clustering to identify the characters in the video, and form a graph in which the prominence (frequency of appearance) of the character(s), and their interactions (co-occurrence) are captured. We use this graph to infer the relevance of the characters present in each candidate frame. Once every face is scored based on the two criteria above, we infer frame level scores by combining the scores for all the faces within a frame.