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KeyPosS: Plug-and-Play Facial Landmark Detection through GPS-Inspired True-Range Multilateration

ACM Multimedia (ACM MM), 2023
25 May 2023
Xueting Bao
Zhi-Qi Cheng
Ju He
Chenyang Li
Wangmeng Xiang
Yuxuan Zhou
Han Liu
Wen Liu
Bin Luo
Yifeng Geng
Xuansong Xie
    CVBM
ArXiv (abs)PDFHTMLGithub (10★)
Abstract

In the realm of facial analysis, accurate landmark detection is crucial for various applications, ranging from face recognition and expression analysis to animation. Conventional heatmap or coordinate regression-based techniques, however, often face challenges in terms of computational burden and quantization errors. To address these issues, we present the KeyPoint Positioning System (KeyPosS) - a groundbreaking facial landmark detection framework that stands out from existing methods. The framework utilizes a fully convolutional network to predict a distance map, which computes the distance between a Point of Interest (POI) and multiple anchor points. These anchor points are ingeniously harnessed to triangulate the POI's position through the True-range Multilateration algorithm. Notably, the plug-and-play nature of KeyPosS enables seamless integration into any decoding stage, ensuring a versatile and adaptable solution. We conducted a thorough evaluation of KeyPosS's performance by benchmarking it against state-of-the-art models on four different datasets. The results show that KeyPosS substantially outperforms leading methods in low-resolution settings while requiring a minimal time overhead. The code is available at https://github.com/zhiqic/KeyPosS.

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