Lien, Jyh-Ming (2006-12). Approximate convex decomposition and its applications. Doctoral Dissertation. Thesis uri icon

abstract

  • Geometric computations are essential in many real-world problems. One important
    issue in geometric computations is that the geometric models in these problems
    can be so large that computations on them have infeasible storage or computation
    time requirements. Decomposition is a technique commonly used to partition complex
    models into simpler components. Whereas decomposition into convex components results
    in pieces that are easy to process, such decompositions can be costly to construct
    and can result in representations with an unmanageable number of components. In
    this work, we have developed an approximate technique, called Approximate Convex
    Decomposition (ACD), which decomposes a given polygon or polyhedron into "approximately
    convex" pieces that may provide similar benefits as convex components,
    while the resulting decomposition is both significantly smaller (typically by orders of
    magnitude) and can be computed more efficently. Indeed, for many applications, an
    ACD can represent the important structural features of the model more accurately
    by providing a mechanism for ignoring less significant features, such as wrinkles and
    surface texture. Our study of a wide range of applications shows that in addition to
    providing computational efficiency, ACD also provides natural multi-resolution or hierarchical
    representations. In this dissertation, we provide some examples of ACD's
    many potential applications, such as particle simulation, mesh generation, motion
    planning, and skeleton extraction.

publication date

  • December 2006