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Poster

Towards Automatic Power Battery Detection: New Challenge, Benchmark Dataset and Baseline

Xiaoqi Zhao · Youwei Pang · Zhenyu Chen · Qian Yu · Lihe Zhang · Hanqi Liu · Jiaming Zuo · Huchuan Lu


Abstract: We conduct a comprehensive study on a new task named power battery detection (PBD), which aims to localize the dense cathode and anode plates endpoints from X-ray images to evaluate the quality of power batteries. Existing manufacturers usually rely on human eye observation to complete PBD, which makes it difficult to balance the accuracy and efficiency of detection. As the power source of new energy vehicles, the power battery is the most important system in the vehicle. It is crucial to strictly evaluate the quality of power batteries. However, there are no publicly available benchmark datasets and the AI-level baseline. Most factories rely on human eye observation and traditional image processing to complete PBD, which makes it difficult to ensure the accuracy and efficiency of detection at the same time.To address this issue and drive more attention into this meaningful task, we first elaborately collect a dataset, called X-ray PBD, which has $1,500$ diverse X-ray images selected from thousands of power batteries of $5$ manufacturers, with $7$ different visual interference. Then, we propose a novel segmentation-based solution for PBD, termed multi-dimensional collaborative network (MDCNet). With the help of line and counting predictors, the representation of the point segmentation branch can be improved at both semantic and detail aspects.Besides, we design an effective distance-adaptive mask generation strategy, which can alleviate the visual challenge caused by the inconsistent distribution density of plates to provide MDCNet with stable supervision. In addition, we design eight metrics based on the discriminant criteria in real-life factories to comprehensively evaluate the detection performance of the model. Without any bells and whistles, our segmentation-based MDCNet consistently outperforms various other corner detection, crowd counting and general/tiny object detection-based solutions, making it a strong baseline that can help facilitate future research in PBD. Finally, we share some potential difficulties and works for future researches.

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