Efficient visual code localization with neural networks.

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Bibliographic Details
Title: Efficient visual code localization with neural networks.
Authors: Bodnár, Péter, Grósz, Tamás, Tóth, László, Nyúl, László G.
Source: Pattern Analysis & Applications; Feb2018, Vol. 21 Issue 1, p249-260, 12p
Subject Terms: ARTIFICIAL neural networks, DISCRETE cosine transforms, DECODING algorithms, JPEG (Image coding standard), GRAPHICS processing units
Abstract: The use of computer-readable visual codes became common in our everyday life both in industrial environments and for private use. The reading process of visual codes consists of two steps, namely, localization and data decoding. In this paper we examine the localization step of visual codes using conventional and deep rectifier neural networks. They are also evaluated in the discrete cosine transform domain and shown to be efficient, which makes full decompression unnecessary for setups involving JPEG images. This approach is also efficient from a storage viewpoint and computation cost viewpoint, since camera hardware can provide a JPEG stream as output in many cases. The use of neural networks implemented on graphics processing unit allows real-time automatic code object localization. In our earlier studies, the proposed approach was evaluated on the most popular code type, quick response code, and some other 2D codes as well. Here, we also prove that deep rectifier networks are also suitable for 1D barcode localization and present extensive evaluation and comparison to state-of-the-art approaches. [ABSTRACT FROM AUTHOR]
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Database: Complementary Index
Description
Abstract:The use of computer-readable visual codes became common in our everyday life both in industrial environments and for private use. The reading process of visual codes consists of two steps, namely, localization and data decoding. In this paper we examine the localization step of visual codes using conventional and deep rectifier neural networks. They are also evaluated in the discrete cosine transform domain and shown to be efficient, which makes full decompression unnecessary for setups involving JPEG images. This approach is also efficient from a storage viewpoint and computation cost viewpoint, since camera hardware can provide a JPEG stream as output in many cases. The use of neural networks implemented on graphics processing unit allows real-time automatic code object localization. In our earlier studies, the proposed approach was evaluated on the most popular code type, quick response code, and some other 2D codes as well. Here, we also prove that deep rectifier networks are also suitable for 1D barcode localization and present extensive evaluation and comparison to state-of-the-art approaches. [ABSTRACT FROM AUTHOR]
ISSN:14337541
DOI:10.1007/s10044-017-0619-6