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"abstract": "ImageNet has millions of images that are labeled with English WordNet synsets. This paper investigates the extension of ImageNet to Arabic using Arabic WordNet. The objective is to discover if Arabic synsets can be found for synsets used in ImageNet. The primary finding is the identification of Arabic synsets for 1,219 of the 21,841 synsets used in ImageNet, which represents 1.1 million images. By leveraging the parent-child structure of synsets in ImageNet, this dataset is extended to 10,462 synsets (and 7.1 million images) that have an Arabic label, which is either a match or a direct hypernym, and to 17,438 synsets (and 11 million images) when a hypernym of a hypernym is included. When all hypernyms for a node are considered, an Arabic synset is found for all but four synsets. This represents the major contribution of this work: a dataset of images that have Arabic labels for 99.9% of the images in ImageNet.", |
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"text": "ImageNet has millions of images that are labeled with English WordNet synsets. This paper investigates the extension of ImageNet to Arabic using Arabic WordNet. The objective is to discover if Arabic synsets can be found for synsets used in ImageNet. The primary finding is the identification of Arabic synsets for 1,219 of the 21,841 synsets used in ImageNet, which represents 1.1 million images. By leveraging the parent-child structure of synsets in ImageNet, this dataset is extended to 10,462 synsets (and 7.1 million images) that have an Arabic label, which is either a match or a direct hypernym, and to 17,438 synsets (and 11 million images) when a hypernym of a hypernym is included. When all hypernyms for a node are considered, an Arabic synset is found for all but four synsets. This represents the major contribution of this work: a dataset of images that have Arabic labels for 99.9% of the images in ImageNet.", |
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"text": "ImageNet is a dataset comprised of 14 million images (Deng et al., 2009; Russakovsky et al., 2015) . Each image in the dataset is labeled with a WordNet (Miller, 1995) synset representing the identifying object in the image. The fall 2011 release of the dataset has a total of 21,841 unique synsets that are used to label images. The dataset is organized by dividing these synsets into several major subtrees. Moreover, ImageNet is structured in a way that maintains the semantic hierarchical structure of synsets in WordNet, where each image is also linked to branches of hypernyms ( Figure 1 ). ImageNet is one major reason for recent advances in computer vision research and deep learning (Cetinic et al., 2018; Stock and Cisse, 2018; Kornblith et al., 2019) .", |
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"text": "Stock and Cisse, 2018;", |
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"section": "Introduction", |
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"sec_num": "1" |
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"text": "Arabic Synset from AWN 0. Siberian husky not available 1. Sled dog: Direct hypernym for \"siberian husky\".", |
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"section": "Synset in ImageNet", |
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"text": "2. Working dog: Hypernym for \"sled dog\".", |
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"section": "not available", |
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"text": "3. Dog: Hypernym for \"working dog\".", |
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"section": "\u202b\u0643\u0644\u0628\u202c \u202b\u0639\u0627\u0645\u0644\u060c\u202c \u202b\u0643\u0644\u0628\u202c \u202b\u0627\u0644\u0634\u063a\u0644\u202c", |
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"text": "Figure 1: Images in ImageNet for the synset \"Siberian husky\". Although an Arabic synset from AWN is not available for the synset or its direct hypernym, one is available for the hypernym of the hypernym.", |
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"text": "While computer vision research has seen significant progress in recent years, the focus has been on English. Limited work exists to extend research to other languages, including Arabic. This lack of research may present challenges to scientists, researchers, and practitioners who seek to address problems related to computer vision in Arabic. Furthermore, the unavailability of a large dataset of images labeled in Arabic may prevent the development of solutions that address challenging tasks, such as visual question answering and image classification in Arabic. Therefore, a large dataset of images labeled with Arabic has the potential to progress research in Arabic computer vision. Moreover, scholars studying Arabic natural language processing often develop methods specifically designed for Arabic. Thus, it is possible that similarly unique methods are needed for Arabic computer vision.", |
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"section": "\u202b\u0643\u0644\u0628\u202c", |
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"text": "College of Computer Engineering and Sciences, Prince Sattam bin Abdulaziz University Al-Kharj, Saudi Arabia [email protected]", |
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"section": "Abdulkareem Alsudais", |
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"text": "The primary objective of this paper is to investigate the effectiveness of extending ImageNet to Arabic using Arabic WordNet (AWN) by searching in AWN for all the synsets used in ImageNet. AWN was originally developed in 2006 (Black et al., 2006) . Since then, several authors have attempted to extend it by improving its coverage or quality (Alkhalifa and Rodr\u00edguez, 2009; Abouenour et al., 2013; Bond and Foster, 2013; Regragui et al., 2016; Batita et al., 2019) . The possibility of using AWN to extend ImageNet has been experimented with in one paper (Alsudais, 2019) . In the paper, the author tested using AWN to find Arabic synsets for a small sample of 100 images from ImageNet and indicated that Arabic synsets were found for only six synsets. However, the author did not attempt to discover if Arabic synsets were available for hypernyms of these synsets. This paper attempts to overcome the problems of limited availability for direct matches by also searching branches of hypernyms in AWN. In summary, this paper makes three major contributions:", |
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"text": "\u2022 It investigates the possibility of extending ImageNet to Arabic using the Arabic WordNet (AWN). \u2022 It adds to the limited work in computer vision research in Arabic. \u2022 It generates a new, large dataset of images with Arabic labels. This dataset includes at least one label for all but four of the 21,841 synsets used in ImageNet. ImageNet has been used to solve tasks in the intersection of language and vision research (Zhou et al., 2018; Chen et al., 2019; Davis et al., 2019; Vempala and Preot, 2019) . For Arabic computer vision, limited related work currently exists. Several authors have worked on the generation of Arabic captions for images (Jindal, 2018; Almuzaini et al., 2018) . In another paper, a new dataset related to Arabic computer vision was built. sample of images in ImageNet to German using human subjects, which resulted in a dataset of 1,305,602 images (Roller and Schulte, 2013) . In the only other closely related paper, the author investigated the possibility of generating Arabic labels for images in ImageNet using an online translator (Alsudais, 2019) . In the paper, the author targeted a sample of 1,895 images from ImageNet and used an online translator to generate Arabic labels for the synsets. A human judge then evaluated the accuracy of the translations. The results indicated that the translations were accurate for 65% of the images, which represented 1,643 unique synsets and 1,910,935 images. This suggests that solely using a translator to translate labels of images in ImageNet may not produce highly accurate results.", |
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"text": "In ImageNet, each synset has a name and an ID. To begin exploring the possibility of finding Arabic synsets and labels for images in ImageNet using AWN, all the synsets' IDs are retrieved from ImageNet. There are several releases for ImageNet. In this paper, the fall 2011 release is used. This release includes 21,841 unique WordNet synsets, and each is linked to one or many images. For example, the synset ID \"n07873807\" includes 1,296 images of \"pizza\". There are also 1,186 images for \"dish\", the direct hypernym for \"pizza\". Moreover, all the images labeled with \"pizza\" can also be labeled with \"dish\". Since \"dish\" is a hypernym for several other synsets used in ImageNet, such as \"sushi\" and \"curry\", the number of images for \"dish\" extends to all images with a synset that is a hyponym (child) for \"dish\". ImageNet's data are downloaded directly from ImageNet's website 1 . ImageNet provides the URLs of the images. These URLs are viewed in order to access the images. Due to ongoing developments related to the removal of problematic images present in the \"person\" subtree, ImageNet no longer provides a method to download the full dataset directly (Yang et al., 2020) . The dataset has a total of 14,197,122 images. Each synset has an average of 944 images directly assigned to the synset. The minimum number of images is 1 image, and the maximum is 2,382 images for a synset.", |
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"section": "Extending ImageNet to Arabic using Arabic WordNet", |
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"text": "The first step is to investigate if Arabic synsets are available for each of the 21,841 synsets used in ImageNet. To complete this, all the synsets IDs are processed. For each synset, AWN is searched to find a direct match. There are several versions of AWN and several methods to access it currently exist. To gain additional knowledge on WordNet and AWN, and to determine a reliable method to access it, the online interfaces for both the Open Multilingual WordNet (OMW) 2 (Bond and Paik, 2012) and the Princeton WordNet 3 (Princeton University, 2010) are tested. Additionally, the WordNet interface in the python library NLTK 4 is tested. The interface includes the OMW, which has AWN (Black et al., 2006; Abouenour et al., 2013) . This version of AWN has 9,916 Arabic synsets, which is less than the number of synsets used in ImageNet. This is the first indicator that it may not be possible to find direct matches for all synsets. Still, it is not clear if it is possible for a synset in ImageNet to be directly linked to several synsets in AWN. Based on this experimental phase, the NLTK interface is selected to access Arabic synsets in AWN. ImageNet uses WordNet 3.0, which has synsets IDs that are different than one used in WordNet 3.1. Therefore, the results in this paper are necessarily achieved by using WordNet 3.0.", |
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"section": "Direct Arabic Synsets for Synsets in ImageNet", |
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"sec_num": "2.1" |
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"text": "Since ImageNet structures synsets based on the semantic structure of synsets in WordNet, a synset in ImageNet is essentially a node that is connected to a branch or several branches of hypernyms. The objective of this step is to discover if an Arabic synset in AWN is available for the list of hypernyms linked to a synset. To accomplish this, the parent-child (or hypernym-hyponym) pairs in ImageNet are downloaded from a webpage in ImageNet's website 5 . Algorithm 1 includes details of the steps followed in order to find direct matches as well as Arabic hypernyms for synsets. The algorithm relies on the use of a recursive function that looks for an Arabic synset for all the hypernyms connected to the synset at all levels. The stopping condition for this recursive function is when all possible hypernyms are processed. If find_in_AWN (synset) is True then 3:", |
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"section": "Arabic Synsets for Hypernyms", |
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"sec_num": "2.2" |
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"text": "Direct_AWN.add (synset, AWN_synset) 4:", |
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"sec_num": "2.2" |
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"text": "Find_Hypers (synset, synset, 1) 5:", |
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"text": "func Find_Hypers (synset, hyper_synset, level): 6:", |
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"text": "Hypers=get_hypers (hyper_synset) 7:", |
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"text": "If length (Hypers) == 0: 8:", |
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"text": "Stop #no more hypernyms to process 9:", |
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"text": "For hyper_synset in Hypers: 10:", |
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"text": "If find_in_AWN (hyper_synset) is True then 11:", |
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"text": "Hyper_AWN.add (synset, 12:", |
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"sec_num": "2.2" |
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"text": "hyper_ AWN_synset, level) 13:", |
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"sec_num": "2.2" |
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"text": "Find_Hypers (synset, hyper_synset, level+1) To complete this process, all hypernyms of a synset are retrieved. In most cases, a synset that is a leaf node has one or two direct hypernyms. Each hypernym is searched for in AWN in order to discover if an Arabic synset for the hypernym exist in AWN. If one is found, it is added to the set of Arabic synsets for the primary synset. The level of the hypernym is also saved. For example, since an Arabic synset is available for the synset \"dish\", which happens to be a hypernym for \"pizza\", the Arabic synset for \"dish\" is saved for the \"pizza\" synset. Additionally, the number \"one\" is saved because \"dish\" is a direct hypernym for \"pizza\". Similarity, the number \"two\" is saved for \"nutriment\", which is the hypernym for \"dish\". If a synset has two direct hypernyms, they are both saved as appearing in level one. Hypernyms are only saved when an Arabic synset is found.", |
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"text": "(synset, hyper_synset, level+1)", |
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"text": "This step results in a dataset of all AWN synsets in ImageNet, as well as the Arabic synsets available at each level of their hypernyms. Since it is possible for a synset to have two hypernyms, the objective of searching hypernyms is to indicate if any Arabic synsets exist for any of the hypernyms. It is unclear if using hypernyms to label images in Arabic will produce images with acceptable and meaningful labels. Future work should investigate the quality of generated Arabic sysnets. Direct matches were found for 1,219 of the 21,841 synsets used in ImageNet. Some of these identified synsets are of higher-level categories, while others are of fine-grained ones. Table 1 includes examples of images where an Arabic synset was found in AWN. The table also shows both the English and Arabic synsets. Since each synset is linked to many images, the dataset of 1,219 synsets was extended to 1,150,651 images, which is 8.1% of ImageNet's total number of images. This dataset represents a major contribution of the paper, as it can be used in several tasks related to Arabic computer vision. Since all the labels are of direct matches, the quality of the labels should be high. However, further examination and full evaluations are needed for confirmation.", |
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"text": "To expand the dataset, hypernyms of synsets used in ImageNet were searched for in AWN. The result of this extension was the identification of Arabic synsets for all but four synsets used in ImageNet. These four synsets include only 1,366 images. This indicates that there are only 1,366 images in ImageNet without Arabic synsets in AWN for the synset or one of its hypernyms in its branch of hypernyms. A detailed summary of the results is presented in Table 2 . In the table, \"AWN's synsets\" refers to the number of Arabic synsets found for a synset in ImageNet at each level. The \"AWN's synset + previous\" refers to the total number of Arabic synsets identified when the synsets found at level and the previous levels are combined. The \"Images in ImageNet\" refers to the total number of images found for each Arabic synset at each level. When only the first and second level hypernyms were considered, the dataset included Arabic synsets for 79.8% of the synsets and 81.2% of the images in ImageNet. This represents a large dataset of 11,533,525 images, all labeled with an Arabic synset that is either the direct match for the synset used in ImageNet, the Arabic synset for the hypernym, or the Arabic synset for the hypernym of a hypernym. Although a synset in this subset (Row #5 in Table 2 ) was found for 17,438 of the synsets used in ImageNet, many of the identified Arabic synsets were used more than once since the total number of synsets in AWN is only 9,916. It is important to note that as the level of the hypernym increases, the hypernym become more abstract and general. For example, some of the 7th-level hypernyms include \"entity\", \"act\", and \"event\". Therefore, the usability of Arabic synsets at higher levels requires additional investigation. While this dataset of Arabic synsets for images in ImageNet is likely reliable since it is based on the utilization of previously existing and evaluated datasets, certain characteristic of the Arabic language and naming decisions in AWN suggest that proper evaluation of the dataset's accuracy may be needed. For example, one of the synsets found in AWN was \"nurse\". Unlike English, Arabic nouns are gendered. Accordingly, in AWN the Arabic synset for \"nurse\" is \"male nurse\". Therefore, an automated image classification system that relies on this synset may suggest \"male nurse\" for images of female nurses.", |
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"text": "This \"nurse\" synset is part of the \"person\" subtree, which is one of the major subtrees in ImageNet. This subtree includes several synsets that have been criticized for issues such as representation biases and offensive images (Shankar et al., 2017; Mehrabi et al., 2019) . During this study, it was observed that images in the \"Iraqi\" synset were mostly war related. Additional issues were discovered for images in the \"Syrian\" synset. Recently, some of the scientists behind ImageNet addressed concerns regarding issues in the \"person\" subtree and indicated that an upgrade of ImageNet will be released with two changes: 1) only up to 158 of the 2,832 synsets in the \"person\" subtree will be kept, and 2) attention will be given to representation biases in images in the synsets that are not removed (Yang et al., 2020) . In anticipation for these updates, Table 2 also includes results obtained when the 2,832 synsets in the \"person\" subtree were not included. These results suggest only a minor decrease in percentages of synsets found in each level.", |
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"text": "(Yang et al., 2020)", |
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"text": "In this paper, the possibility of extending ImageNet to Arabic is investigated. The following discoveries were made: 1) an Arabic synset in AWN exists for 1,219 of the synsets used in ImageNet, which represents 1,150,651 images, and 2) Arabic synsets in AWN exist for 99.9% of the images in ImageNet when the branches of hypernyms for synsets were considered. To improve the results found, several options are available. One option is to use the Extended Open Multilingual Wordnet (1.2), which enhances Arabic WordNet by utilizing Wiktionary and Unicode Common Locale Data Repository (Bond and Foster, 2013) . This automatic extension of AWN increases the total number of unique synsets available in AWN to 14,650 synsets. Using this version of AWN would likely find Arabic synsets for additional images used in ImageNet. Several other directions for future work exist. One important extension is to provide an extensive evaluation of the dataset. Another avenue for further research would involve investigating the availably of Arabic synsets for each of the synsets in ImageNet's 1,000 object classes, as this subset is often used in computer vision research.", |
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"text": "(Bond and Foster, 2013)", |
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"section": "Conclusion", |
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"sec_num": "4" |
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}, |
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{ |
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"text": "http://www.image-net.org/download.php", |
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"section": "", |
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"sec_num": null |
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}, |
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"text": "http://compling.hss.ntu.edu.sg/omw/ 3 http://wordnet-rdf.princeton.edu/ 4 http://www.nltk.org/howto/wordnet.html", |
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"section": "", |
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"text": "http://www.image-net.org/archive/wordnet.is_a.txt", |
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"back_matter": [ |
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{ |
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"text": "The authors constructed a dataset of 3,000 clips that they classified with emotional labels such as \"happy\", \"sad\", or \"angry\" (Shaqra et al., 2019). The authors argued that emotional facial expressions may be different depending on the cultural context. In other papers, attempts to connect ImageNet to external resources were made by linking the synsets in ImageNet to items in Wikidata (Nielsen, 2018) and by extending a", |
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} |