Mask-aware IoU for Anchor Assignment in Real-time Instance Segmentation

19 Oct 2021  ·  Kemal Oksuz, Baris Can Cam, Fehmi Kahraman, Zeynep Sonat Baltaci, Sinan Kalkan, Emre Akbas ·

This paper presents Mask-aware Intersection-over-Union (maIoU) for assigning anchor boxes as positives and negatives during training of instance segmentation methods. Unlike conventional IoU or its variants, which only considers the proximity of two boxes; maIoU consistently measures the proximity of an anchor box with not only a ground truth box but also its associated ground truth mask. Thus, additionally considering the mask, which, in fact, represents the shape of the object, maIoU enables a more accurate supervision during training. We present the effectiveness of maIoU on a state-of-the-art (SOTA) assigner, ATSS, by replacing IoU operation by our maIoU and training YOLACT, a SOTA real-time instance segmentation method. Using ATSS with maIoU consistently outperforms (i) ATSS with IoU by $\sim 1$ mask AP, (ii) baseline YOLACT with fixed IoU threshold assigner by $\sim 2$ mask AP over different image sizes and (iii) decreases the inference time by $25 \%$ owing to using less anchors. Then, exploiting this efficiency, we devise maYOLACT, a faster and $+6$ AP more accurate detector than YOLACT. Our best model achieves $37.7$ mask AP at $25$ fps on COCO test-dev establishing a new state-of-the-art for real-time instance segmentation. Code is available at https://github.com/kemaloksuz/Mask-aware-IoU

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Datasets


Task Dataset Model Metric Name Metric Value Global Rank Result Benchmark
Real-time Instance Segmentation MSCOCO maYOLACT-700 (ResNet-50) Frame (fps) 25 (Tesla V100) # 13
mask AP 37.7 # 9
AP50 59.4 # 4
AP75 39.9 # 6
APS 18.1 # 4
APM 40.8 # 5
APL 52.5 # 10
Real-time Instance Segmentation MSCOCO maYOLACT-550 (ResNet-50) Frame (fps) 30 (Tesla V100) # 10
mask AP 35.2 # 13
AP50 56.2 # 9
AP75 37.1 # 10
APS 14.7 # 7
APM 38.0 # 8
APL 51.4 # 11

Methods