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Using Google Street View imagery to capture micro built environment characteristics in drug places, compared with street robbery

机译:与街头抢劫相比,使用Google Street View Imager捕获药物地方的微内置环境特征

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The drug-related problem poses a serious threat to human health and safety. Previous studies have associated drug places with factors related to place management and accessibility, often at several scattered places, as data at the micro level are hard to obtain at a city-wide scale. Google Street View imagery presents a new source for deriving micro built environment characteristics, including place management and accessibility in larger areas. In this study, we calculate an overall safety score by the Streetscore algorithm and extract physical elements at the address location by the Pyramid Scene Parsing Network (PSPNet) model from every Google Street View image. Additionally, to distinguish drug activities from other types of crime, we compare drug-related calls for service (CFS) data with street robbery incident data. We build the binary logistic regression models to assess the impact of the micro built environment variables on drug activities after controlling for other criminological elements pertaining to drug places. Results show that the safety score, traffic lights, and poles make statistically significant and negative (or deterring) impacts on drug activities, whilst traffic signs and roads make statistically significant and positive (or contributing) impacts. The positive impact of buildings is also notable as its p-value is slightly over 0.05. This study provides evidence at the micro level that less place management and higher accessibility can increase the risk of drug activities. These street-view variables may be generally applicable to other types of crime research in the context of the micro built environment.
机译:毒品有关的问题对人类健康和安全构成了严重的威胁。以前的研究有相关的药物,具有与地方管理和可访问性有关的因素,通常在几个分散的地方,因为微观水平的数据很难在城市范围内获得。 Google Street View Imagery提供了一种新的来源,用于推导微内置的环境特性,包括在较大区域的地方管理和可访问性。在这项研究中,我们通过每个Google街道视图图像计算了街道扫描算法的整体安全评分,并由金字塔场景解析网络(PSPNET)模型提取地址位置处的物理元素。此外,为了区分从其他类型的犯罪中的药物活动,我们将毒品相关的呼叫与街道抢劫事件数据进行比较服务(CFS)数据。我们构建二元逻辑回归模型,以评估微内置环境变量对药物活动后的药物活动对药物活动的影响。结果表明,安全得分,交通灯和极点对药物活动产生统计显着和负面(或阻止)影响,而交通标志和道路具有统计学意义和积极(或贡献)的影响。由于其P值略高于0.05,建筑物的积极影响也显着。本研究提供了微观水平的证据,即在管理和更高的可接近性降低,可以增加药物活动的风险。这些街道视图变量通常可能在微内置环境的背景下适用于其他类型的犯罪研究。

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