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11 hours ago · HOG is a feature descriptor used for object detection in computer vision. It involves counting the occurrences of gradient orientation in localized portions of ...
22 hours ago · This paper proposes a novel low-complexity non-smooth funnel control scheme that uses a transition process to decouple the funnel boundary design from the ...
10 hours ago · We present a novel Front-Tracking method, the Edge-Based Interface Tracking (EBIT) method for multiphase flow simulations. In the EBIT method, the markers are ...
Missing: Estimating | Show results with:Estimating
3 hours ago · This study introduces a comprehensive approach to HAR by integrating two critical modalities: RGB imaging and advanced pose estimation features. Our methodology ...
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10 hours ago · To find the best orientation and tilt angle for solar collectors in mountainous regions with high altitude, Xu et al. [22] used multidisciplinary techniques ...
Missing: Track | Show results with:Track
15 hours ago · We present a novel method that integrates an enhanced YOLOv5s object detection model with the DeepSORT multi-object tracking algorithm to meticulously track ...
20 hours ago · In contrast to the U-shaped networks, AU3-GAN better preserves road information by focusing on important features or regions using an attention mechanism.
8 hours ago · The main focus is usually on the reasoning behind the decisions or predictions made by the AI which are made more understandable and transparent. XAI counters ...
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9 hours ago · To improve the attitude estimation of low-dynamic vehicles under uneven soil conditions or vibrations, a robust Kalman filter (RKF) was developed and tested in ...
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13 hours ago · Our proposed framework utilizes a multi-critic reinforcement learning algorithm to effectively handle the mixture of dense and sparse rewards. Additionally, it ...