Dilated Convolutions with Lateral Inhibitions for Semantic Image Segmentation
This work addresses boundary ambiguity in semantic segmentation for computer vision applications, representing an incremental improvement over existing dilated convolution methods.
The paper tackled the problem of ambiguous predictions on object boundaries in semantic image segmentation by proposing dilated convolutions with lateral inhibitions (LI-Convs), which improved sensitivity to boundaries and feature extraction density. Experimental results on PASCAL VOC 2012, CelebAMask-HQ, and ADE20K datasets showed that LI-based models outperformed baselines, verifying their effectiveness and generality.
Dilated convolutions are widely used in deep semantic segmentation models as they can enlarge the filters' receptive field without adding additional weights nor sacrificing spatial resolution. However, as dilated convolutional filters do not possess positional knowledge about the pixels on semantically meaningful contours, they could lead to ambiguous predictions on object boundaries. In addition, although dilating the filter can expand its receptive field, the total number of sampled pixels remains unchanged, which usually comprises a small fraction of the receptive field's total area. Inspired by the Lateral Inhibition (LI) mechanisms in human visual systems, we propose the dilated convolution with lateral inhibitions (LI-Convs) to overcome these limitations. Introducing LI mechanisms improves the convolutional filter's sensitivity to semantic object boundaries. Moreover, since LI-Convs also implicitly take the pixels from the laterally inhibited zones into consideration, they can also extract features at a denser scale. By integrating LI-Convs into the Deeplabv3+ architecture, we propose the Lateral Inhibited Atrous Spatial Pyramid Pooling (LI-ASPP), the Lateral Inhibited MobileNet-V2 (LI-MNV2) and the Lateral Inhibited ResNet (LI-ResNet). Experimental results on three benchmark datasets (PASCAL VOC 2012, CelebAMask-HQ and ADE20K) show that our LI-based segmentation models outperform the baseline on all of them, thus verify the effectiveness and generality of the proposed LI-Convs.