Class-Agnostic Segmentation Loss and Its Application to Salient Object
Detection and Segmentation
- URL: http://arxiv.org/abs/2010.14793v1
- Date: Wed, 28 Oct 2020 07:11:15 GMT
- Title: Class-Agnostic Segmentation Loss and Its Application to Salient Object
Detection and Segmentation
- Authors: Angira Sharma, Naeemullah Khan, Ganesh Sundaramoorthi, Philip Torr
- Abstract summary: We present a novel loss function, called class-agnostic segmentation (CAS) loss.
We show that the CAS loss function is sparse, bounded, and robust to class-imbalance.
We investigate the performance against the state-of-the-art methods in two settings of low and high-fidelity training data.
- Score: 17.532822703595766
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: In this paper we present a novel loss function, called class-agnostic
segmentation (CAS) loss. With CAS loss the class descriptors are learned during
training of the network. We don't require to define the label of a class
a-priori, rather the CAS loss clusters regions with similar appearance together
in a weakly-supervised manner. Furthermore, we show that the CAS loss function
is sparse, bounded, and robust to class-imbalance. We apply our CAS loss
function with fully-convolutional ResNet101 and DeepLab-v3 architectures to the
binary segmentation problem of salient object detection. We investigate the
performance against the state-of-the-art methods in two settings of low and
high-fidelity training data on seven salient object detection datasets. For
low-fidelity training data (incorrect class label) class-agnostic segmentation
loss outperforms the state-of-the-art methods on salient object detection
datasets by staggering margins of around 50%. For high-fidelity training data
(correct class labels) class-agnostic segmentation models perform as good as
the state-of-the-art approaches while beating the state-of-the-art methods on
most datasets. In order to show the utility of the loss function across
different domains we also test on general segmentation dataset, where
class-agnostic segmentation loss outperforms cross-entropy based loss by huge
margins on both region and edge metrics.
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