Steel Sheet Counting from an Image with a Two-Stream Network
IEEE Trans Instrum Meas(2025)
School of Computer Science and Technology
Abstract
Steel sheets play a pivotal role in a wide range of industrial processes, including the production of ships and vehicles, as well as the construction of buildings and bridges. Meanwhile, counting steel sheets accurately is essential for effective production management in factories. However, manual counting large numbers of stacked steel sheets can lead to visual vertigo, resulting in inaccurate counts. Moreover, physical methods like weighing are also labor-intensive and inconvenient. Fortunately, advancements in computer vision technology have opened up new possibilities for efficient steel sheets counting. Nevertheless, implementing an automatic counting method encounters challenges due to the limited texture features present in steel sheets. In this paper, we present a novel approach to count steel sheets from a captured image. To the best of our knowledge, this is the pioneering work that address this problem using a computational approach. We make the following contributions. First, we construct a comprehensive steel sheets dataset that contains steel sheets images with corresponding manually annotated dots. Second, we propose a novel network, called TSNet, which effectively extracts features from both the RGB image and its gradient map for precise steel sheet counting. Third, we conduct extensive experiments to evaluate the effectiveness of our proposed method and demonstrate its superiority over carefully chosen baselines from state-of-the-art counting methods.
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Key words
Efficient network,gradient map,multiscale feature fusion,object counting,steel sheet counting
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