In this paper, we propose a novel methodology for machine learning-based hotspot detection that uses lithography information to build support vector machine (SVM) during its learning process. Unlike previous studies that use only geometric information or require a post-optical proximity correction (OPC) mask, this proposed method utilizes detailed optical information but bypasses post-OPC mask by sampling latent image intensity and uses those points to train an SVM model. The results suggest high accuracy and low false alarm, and faster runtime compared with methods that require a post-OPC mask
In this paper, we develop new classification and estimation algorithms in the context of free space ...
Person recognition is a key issue in visual surveillance. It is needed in many security applications...
International audienceReconfigurable intelligent surface (RIS) is regarded as a key technology for t...
The lithography process for chip manufacturing has been playing a critical role in keeping Moor\u27s...
As the designed feature size of integrated circuits (ICs) continues to shrink, the lithographic prin...
The hotspot detection has received much attention in the recent years due to a substantial mismatch ...
Corona Virus is a pandemic, and the whole world is affected due to it. Apart from the vaccine, the o...
Hotspot detection using thermal imaging has recently become essential in several industrial applicat...
Machine learning has opened a new realm of possibilities in photonic circuit design and manufacturin...
Optical proximity correction (OPC) is a critical step in semiconductor manufacturing due to its high...
by Rohit Dawar, Samit Barai, Pardeep Kumar, Srinivasan Babji and Nihar Mohapatr
Abstract: The paper studies the effectiveness of machine learning methods in computational photolith...
The positions of free electron laser beams on screens are precisely determined by a sequence of mach...
Integrating information coming from different sensors is a fundamental capability for autonomous rob...
Most deep-learning-based target detection methods have high computational complexity and memory cons...
In this paper, we develop new classification and estimation algorithms in the context of free space ...
Person recognition is a key issue in visual surveillance. It is needed in many security applications...
International audienceReconfigurable intelligent surface (RIS) is regarded as a key technology for t...
The lithography process for chip manufacturing has been playing a critical role in keeping Moor\u27s...
As the designed feature size of integrated circuits (ICs) continues to shrink, the lithographic prin...
The hotspot detection has received much attention in the recent years due to a substantial mismatch ...
Corona Virus is a pandemic, and the whole world is affected due to it. Apart from the vaccine, the o...
Hotspot detection using thermal imaging has recently become essential in several industrial applicat...
Machine learning has opened a new realm of possibilities in photonic circuit design and manufacturin...
Optical proximity correction (OPC) is a critical step in semiconductor manufacturing due to its high...
by Rohit Dawar, Samit Barai, Pardeep Kumar, Srinivasan Babji and Nihar Mohapatr
Abstract: The paper studies the effectiveness of machine learning methods in computational photolith...
The positions of free electron laser beams on screens are precisely determined by a sequence of mach...
Integrating information coming from different sensors is a fundamental capability for autonomous rob...
Most deep-learning-based target detection methods have high computational complexity and memory cons...
In this paper, we develop new classification and estimation algorithms in the context of free space ...
Person recognition is a key issue in visual surveillance. It is needed in many security applications...
International audienceReconfigurable intelligent surface (RIS) is regarded as a key technology for t...