The paper presents our system for generating comics from game log. In particular, comic layout is focused. In order to achieve more comic-like expressivity, we extend an existing comic layout process proposed by Shamir et al. as follows. First, tiny frames are introduced for being placed vertically in the same row. Second, splash frames taking up space of several rows are introduced for emphasizing the corresponding frames. Third, slant frames are introduced for shooting events. Comic sequences generated with the proposed layout process and with the existing one are compared and discussed.
Abstract. We propose a rule-based camerawork controller for a recently proposed a comic generation system. Five camerawork rules are derived through an analysis of online-game webcomics about Lineage 2, one rule for each of the five event types: chatting, fighting, moving, approaching, and special. Each rule consists of three parts relating to the three camera parameters: camera angle, camera position, and zoom position. Each camera-parameter part contains multiples shot types whose value indicates the frequency of their usages in the analyzed webcomics. In this paper, comic frames generated with the proposed camerawork controller are shown and compared with those generated with our previous controller based on heuristic rules, confirming the effectiveness of the proposed camerawork controller.
Abstract. Recently, we have presented a comic generating system that visualizes an online-game play. Our system was inspired by a former work of Shamir et al. However, comics generated in their work can have series of similar frames when multiple actions occur near each other in both time and space. In this paper, we first present a frame-selection module that uses Habituated Self-Organizing Map. Our method prevents comic readers from boredom by getting rid of resemble consecutive frame candidates. We then evaluate the method by a subject experiment using a play from the ICE, an online-game developed in our laboratory. Experimental result confirms that our method is effective in making output comics more interesting than a baseline method.
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