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Saliency-guided improvement for hand posture detection and recognition

机译:显着性改进的手势检测和识别

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摘要

To detect and recognise hand postures against complex backgrounds, we propose a novel model that is constructed by the integration of image saliency and skin information. Although a skin model is a simple and efficient strategy by which to locate skin regions within images, it is easily affected by complex backgrounds, e.g. skin-like background regions and various lighting conditions. To solve this problem, we propose a general image saliency detection method that is then integrated with skin information to improve the performance of hand posture detection. Lastly, a linear Support Vector Machine (SVM) is adopted to recognise hand postures according to the results of hand posture detection. In the experiment, we tested the performance of the proposed image saliency detection method over seven state-of-the-art methods. The saliency-based hand posture detection and recognition model was also evaluated. These experiments show that the proposed model has stable performance for a wide range of images.
机译:为了检测和识别复杂背景下的手势,我们提出了一种通过图像显着性和皮肤信息的集成构建的新型模型。尽管皮肤模型是在图像中定位皮肤区域的简单有效策略,但它容易受到复杂背景(例如背景)的影响。皮肤般的背景区域和各种照明条件。为了解决这个问题,我们提出了一种通用的图像显着性检测方法,然后将其与皮肤信息集成在一起以提高手部姿势检测的性能。最后,采用线性支持向量机(SVM)根据手势检测结果识别手势。在实验中,我们测试了所提出的图像显着性检测方法在七种最新方法中的性能。还评估了基于显着性的手势检测和识别模型。这些实验表明,所提出的模型对于宽范围的图像都具有稳定的性能。

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