Abstract :
Existing mobile visual location recognition (MVLR) applications typically rely on bag-of-features (BOF) representation, which shows superior performance in retrieval accuracy. However, although the BOF framework is promising, it is not compact enough for on-device MVLR. The authors have made two contributions to the design of a BOF-based on-device MVLR system. First, to generate BOF descriptors, they propose a memory-efficient approximate nearest-neighbor search algorithm by combining residual vector quantization (RVQ) and tree-structured RVQ (TSRVQ). Second, they implemented a GPS-based and heading-aware RankBoost algorithm to reduce the dimensionality of the BOF descriptors. The authors evaluate the effectiveness of the proposed algorithms on an HTC mobile phone. Their work applies to on-device MVLR in city-scale workspaces.
Keywords :
Global Positioning System; image recognition; image retrieval; learning (artificial intelligence); mobile computing; search problems; vector quantisation; BOF compression; BOF descriptor dimensionality reduction; BOF descriptor generation; BOF-based on-device MVLR system; GPS-based RankBoost algorithm; HTC mobile phone; TSRVQ; bag-of-features representation; city-scale workspaces; heading-aware RankBoost algorithm; memory-efficient approximate nearest-neighbor search algorithm; on-device mobile visual location recognition; residual vector quantization; retrieval accuracy; tree-structured RVQ; Algorithm design and analysis; Data visualization; Image recognition; Mobile communication; Quantization (signal); Vocabulary; RankBoost; bag-of-features; mobile visual location recognition; multimedia; on-device;