Perceive, Excavate and Purify: A Novel Object Mining Framework for
Instance Segmentation
- URL: http://arxiv.org/abs/2304.08826v1
- Date: Tue, 18 Apr 2023 08:47:03 GMT
- Title: Perceive, Excavate and Purify: A Novel Object Mining Framework for
Instance Segmentation
- Authors: Jinming Su, Ruihong Yin, Xingyue Chen and Junfeng Luo
- Abstract summary: We propose a novel object mining framework for instance segmentation.
We first introduce the semantics perceiving subnetwork to capture pixels that may belong to an obvious instance from the bottom up.
In the mechanism, preliminary perceived semantics are regarded as original instances with classifications and locations, and then indistinguishable objects around these original instances are mined.
- Score: 4.375012768093524
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: Recently, instance segmentation has made great progress with the rapid
development of deep neural networks. However, there still exist two main
challenges including discovering indistinguishable objects and modeling the
relationship between instances. To deal with these difficulties, we propose a
novel object mining framework for instance segmentation. In this framework, we
first introduce the semantics perceiving subnetwork to capture pixels that may
belong to an obvious instance from the bottom up. Then, we propose an object
excavating mechanism to discover indistinguishable objects. In the mechanism,
preliminary perceived semantics are regarded as original instances with
classifications and locations, and then indistinguishable objects around these
original instances are mined, which ensures that hard objects are fully
excavated. Next, an instance purifying strategy is put forward to model the
relationship between instances, which pulls the similar instances close and
pushes away different instances to keep intra-instance similarity and
inter-instance discrimination. In this manner, the same objects are combined as
the one instance and different objects are distinguished as independent
instances. Extensive experiments on the COCO dataset show that the proposed
approach outperforms state-of-the-art methods, which validates the
effectiveness of the proposed object mining framework.
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