Benchmark for Generic Product Detection: A Low Data Baseline for Dense Object Detection

December 19, 2019 ยท Entered Twilight ยท ๐Ÿ› International Conference on Image Analysis and Recognition

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Authors Srikrishna Varadarajan, Sonaal Kant, Muktabh Mayank Srivastava arXiv ID 1912.09476 Category cs.CV: Computer Vision Citations 10 Venue International Conference on Image Analysis and Recognition Repository https://github.com/ParallelDots/generic-sku-detection-benchmark โญ 51 Last Checked 2 months ago
Abstract
Object detection in densely packed scenes is a new area where standard object detectors fail to train well. Dense object detectors like RetinaNet trained on large and dense datasets show great performance. We train a standard object detector on a small, normally packed dataset with data augmentation techniques. This dataset is 265 times smaller than the standard dataset, in terms of number of annotations. This low data baseline achieves satisfactory results (mAP=0.56) at standard IoU of 0.5. We also create a varied benchmark for generic SKU product detection by providing full annotations for multiple public datasets. It can be accessed at https://github.com/ParallelDots/generic-sku-detection-benchmark. We hope that this benchmark helps in building robust detectors that perform reliably across different settings in the wild.
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