We adopt multi-angle, multi-lighting, multi-background collection standards, including complex scenarios such as occlusion, blur, and perspective transformation, to enhance model generalization. All images are manually classified, labeled and reviewed by senior annotators, with strict control over sample repeatability and category balance to avoid training bias. The dataset covers general recognition, industrial identification, retail commodity matching, medical auxiliary recognition and other vertical fields, and supports custom category expansion and exclusive scene customization.