phd-typst/preliminary-work/intro.typ

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== Introduction
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Navigating in NVE with a large virtual space (most times through a 2D interface) is sometimes cumbersome.
In particular, a user may have difficulties reaching the right place to find information.
The content provider of the NVE may want to highlight certain interesting features for the users to view and experience, such as a vantage point in a city, an excavation at an archaeological site, or an exhibit in a museum.
To allow users to easily find these interesting locations within the NVE, _3D bookmarks_ or _bookmarks_ for short, can be provided.
A bookmark is simply a 3D virtual camera (with position and camera parameters) predefined by the content provider, and can be presented to users in different ways, including as a text link (URL), a thumbnail image, or a 3D object embedded within the NVE itself.
When users click on a bookmark, NVEs commonly provide a "fly-to" animation to transit the camera from the current
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viewpoint to the destination @controlled-movement-virtual-3d @browsing-3d-bookmarks to help orient the users within the 3D space. // TODO double cite
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Clicking on a bookmark to fly to another viewpoint leads to reduced data locality.
The 3D content at the bookmarked destination viewpoint may overlap less with the current viewpoint.
In the worst case, the 3D objects corresponding to the current and destination viewpoints can be completely disjoint.
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Such movement to a bookmark may lead to a _discovery latency_ @second-life, in which users have to wait for the 3D content for the new viewpoint to be loaded and displayed.
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An analogy for this situation, in the context of video streaming, is seeking into a segment of video that has not been prefetched yet.
In this chapter, we explore the impact of bookmarks on NVE navigation and streaming, and make several contributions.
First, we conducted a crowdsourcing experiment where 51 participants navigated in 3 virtual scenes to complete a task.
This experiment serves two purposes: (i) it validates our intuition that bookmarks significantly reduce the number of interactions and navigation time (in average the time needed to complete the task
for users with bookmarks is half the time for users without bookmarks); (ii) it produces a set of user interaction traces that we use for subsequent simulation experiments.
Second, we quantified the effect of bookmarking on prefetching and visual quality in our experiments.
We showed that, without prefetching, the number of correctly rendered pixels right after clicking on bookmarks can drop up to 10% on average.
If we prefetch the 3D content from the bookmarks according to the probability of access, we do not limit this drop by more than 5%.
Finally, we proposed a method to improve the visual quality after clicking on bookmarks, by exploiting the fact that the visible faces at the bookmark can be precomputed, and by fetching the visible faces only after a bookmark is clicked.
We showed that, if the fetching is done during the 1 or 2 seconds of the "fly-to" camera movement from the current viewpoint to the bookmarked viewpoint, it suffices to increase the number of correctly rendered pixels to more than 20%, without wasting bandwidth on prefetching.
Our key message is that, _in addition to easing navigation, bookmarking allows precomputation of visible faces and can significantly reduce interaction latency, without resorting to prefetching_, which may waste bandwidth by prefetching 3D data that will not be needed.
The rest of the chapter consists of the following sections.
Section X describes the 3D bookmarks that we use in our work, along with our experiments to validate the usefulness of bookmarking.
Section X describes the streaming and prefetching mechanisms that we used to simulate our experiments as well as our main findings.
Finally, we conclude in Section X.