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Tracking and Classification of In-Air Hand Gesture Based on Thermal Guided Joint Filter

机译:基于热导联合滤波器的空中手势跟踪与分类

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摘要

The research on hand gestures has attracted many image processing-related studies, as it intuitively conveys the intention of a human as it pertains to motional meaning. Various sensors have been used to exploit the advantages of different modalities for the extraction of important information conveyed by the hand gesture of a user. Although many works have focused on learning the benefits of thermal information from thermal cameras, most have focused on face recognition or human body detection, rather than hand gesture recognition. Additionally, the majority of the works that take advantage of multiple modalities (e.g., the combination of a thermal sensor and a visual sensor), usually adopting simple fusion approaches between the two modalities. As both thermal sensors and visual sensors have their own shortcomings and strengths, we propose a novel joint filter-based hand gesture recognition method to simultaneously exploit the strengths and compensate the shortcomings of each. Our study is motivated by the investigation of the mutual supplementation between thermal and visual information in low feature level for the consistent representation of a hand in the presence of varying lighting conditions. Accordingly, our proposed method leverages the thermal sensor’s stability against luminance and the visual sensors textural detail, while complementing the low resolution and halo effect of thermal sensors and the weakness against illumination of visual sensors. A conventional region tracking method and a deep convolutional neural network have been leveraged to track the trajectory of a hand gesture and to recognize the hand gesture, respectively. Our experimental results show stability in recognizing a hand gesture against varying lighting conditions based on the contribution of the joint kernels of spatial adjacency and thermal range similarity.
机译:手势方面的研究吸引了许多与图像处理相关的研究,因为它直观地传达了人类与运动意义有关的意图。已经使用各种传感器来利用不同形式的优点来提取由用户的手势传达的重要信息。尽管许多作品都致力于从热像仪中学习热信息的好处,但大多数作品都专注于面部识别或人体检测,而不是手势识别。另外,大多数利用多种方式(例如,热传感器和视觉传感器的组合)的作品,通常在两种方式之间采用简单的融合方法。由于热传感器和视觉传感器都有其自身的缺点和优势,因此我们提出了一种基于联合过滤器的新颖手势识别方法,以同时利用这些优势并弥补每种优势。我们的研究是通过对低特征级别的热和视觉信息之间的相互补充进行研究而得出的,以便在光照条件变化的情况下一致地表示手。因此,我们提出的方法利用了热传感器对亮度和视觉传感器纹理细节的稳定性,同时补充了热传感器的低分辨率和光晕效果以及对视觉传感器照明的弱点。已经利用传统的区域跟踪方法和深度卷积神经网络分别跟踪手势的轨迹和识别手势。我们的实验结果表明,基于空间相邻性和热范围相似性联合核的贡献,在针对变化的光照条件下识别手势的稳定性。

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