Title :
Accurate Human Pose Estimation by Aggregating Multiple Pose Hypotheses Using Modified Kernel Density Approximation
Author :
Eunji Cho ; Daijin Kim
Author_Institution :
Dept. of Comput. Sci. & Eng., Pohang Univ. of Sci. & Technol., Pohang, South Korea
Abstract :
This letter proposes an accurate human pose estimation method that uses a modified kernel density approximation (m-KDA) to multiple pose hypotheses. Existing methods show poor human pose estimation because of cluttered background or self-occlusion by the human. To improve the pose estimation accuracy, we propose to use m-KDA to aggregate multiple pose estimation results. First, we use the flexible mixture-of-parts model (FMM) to estimate the human poses then use the top-M scores to choose the good pose hypotheses. Second, we aggregate the top-M pose hypotheses with the m-KDA, in which each kernel density function is modified by each pose´s score value and each pose´s compatibility function that represents how far each pose hypothesis is departed from the nominal value of top-M pose hypotheses. Third, we determine the optimal pose configuration by repeating the above m-KDA computation, starting from the root part (head) to the leaf parts (hands and feet), sequentially. In pose estimation experiments on two benchmark datasets (PARSE and LSP), the proposed method achieved 1.5-4.0% improvement in the percentage of correct localized parts (PCP) over the state-of-the-art methods.
Keywords :
pose estimation; FMM; LSP; PARSE; PCP; benchmark dataset; cluttered background; correct localized part percentage; flexible mixture-of-part model; human pose estimation method; kernel density function; leaf part; m-KDA computation; modified kernel density approximation; multiple-pose estimation aggregation; multiple-pose hypothesis aggregation; nominal value; optimal pose configuration; pose compatibility function; pose estimation accuracy; pose score value; root part; self-occlusion; top-M pose hypothesis; top-M scores; Accuracy; Aggregates; Approximation methods; Benchmark testing; Computational modeling; Estimation; Kernel; Compatibility function; flexible mixture-of-parts model; histogram of gradients; stickman model;
Journal_Title :
Signal Processing Letters, IEEE
DOI :
10.1109/LSP.2014.2362553