1. Object recognition and detection with deep learning for autonomous driving applications
- Author
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Ayźegül Uçar, Yakup Demir, and Cüneyt Güzeliź
- Subjects
Computer science ,business.industry ,Pedestrian detection ,Deep learning ,Feature extraction ,Cognitive neuroscience of visual object recognition ,020206 networking & telecommunications ,02 engineering and technology ,Computer Graphics and Computer-Aided Design ,Convolutional neural network ,Object detection ,Support vector machine ,Modeling and Simulation ,0202 electrical engineering, electronic engineering, information engineering ,Structural risk minimization ,020201 artificial intelligence & image processing ,Computer vision ,Artificial intelligence ,business ,Software - Abstract
Autonomous driving requires reliable and accurate detection and recognition of surrounding objects in real drivable environments. Although different object detection algorithms have been proposed, not all are robust enough to detect and recognize occluded or truncated objects. In this paper, we propose a novel hybrid Local Multiple system (LM-CNN-SVM) based on Convolutional Neural Networks (CNNs) and Support Vector Machines (SVMs) due to their powerful feature extraction capability and robust classification property, respectively. In the proposed system, we divide first the whole image into local regions and employ multiple CNNs to learn local object features. Secondly, we select discriminative features by using Principal Component Analysis. We then import into multiple SVMs applying both empirical and structural risk minimization instead of using a direct CNN to increase the generalization ability of the classifier system. Finally, we fuse SVM outputs. In addition, we use the pre-trained AlexNet and a new CNN architecture. We carry out object recognition and pedestrian detection experiments on the Caltech-101 and Caltech Pedestrian datasets. Comparisons to the best state-of-the-art methods show that the proposed system achieved better results.
- Published
- 2017
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